SlideShare una empresa de Scribd logo
1 de 24
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Presented by
Mine Haul Truck Health
Monitoring System with PI
System
MBA. PMP. Eng. Alejandro S. Zappa
Reliability Engineer
Barrick Gold Corporation – Pueblo Viejo Mine
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Agenda
• Introduction
• Company Background
• Business Drivers
• Implementation Details
• Results Obtained and Business Impact
• Summary
• Conclusion
2
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Barrick Gold Corporation
3
• 16 Operating Mines
• 17,500 Employees
• 5.52 Million oz in 2016
• AISC1 of $730/oz
1-Express in Press Release — Feb 15, 2017
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 4
Barrick Gold Pueblo Viejo
• More than 2,000 Employees
• Production of 1,165,645 oz. in 2016
• 150,000 Tons mined and moved per day
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 5
The Mining Fleet
• Mining equipment:
– 34 CAT789 Haul Trucks
– 2 Hitachi 3600 Shovels
– 3 CAT 994F Front Loaders
– Other: 30 Support equipment
• Annual production target for 2017 is 45 Million tons
• Maintenance Annual Budget $56 Million
• Truck Fleet
– Budget: 32% of Annual Maint. budget ($17.8 Million)
allocated to Haul Truck fleet
– Truck Down Time cost is $700/Hr
Truck
Shop
Tailings
PIT 1
PIT 2
PIT 3
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Business Drivers
• Contribute to Safety
• Improve Productive Availability
• Increase Operational Efficiency
• Reduce Scheduled & Non-Scheduled Downtime
• Improve Asset Life Cycle Cost and meet Annual Budgets
• Support Corporate Digitization Strategy
6
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
How we monitor health in mining?
7
Monitoring Technician and Engineers,
collect information from different
sources, to trend and investigate why a
truck could fail or had failed.
Recommendations to take action is
manual, time consuming task and some
time late on time.
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Finding Improvement opportunities on this traditional model
8
1 Improve Safety
2 Reduce time
to collect or
analyze
information
6 Reduce Down-
Time Cost
4 Enable the processing of high
volumes of information
3 Visibility and ability to convert
valuable data into Information
5Ability to
predict potential
failures
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
The Challenge
9
• To monitor and manage the Asset Health of the Haul Truck Fleet, in Real
Time, using available Installed Technologies, at a minimum investment to:
– Digitize the on board information
– Turn Information into Action
– Produce faster analysis of more data, delivering more accurate results
– Achieve the strategic Operational and Maintenance goals
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Solution
10
• Interface Jhealth & LIMS to
PI System
• Develop calculations for
predictive analytics
• Create dashboards
• Convert Analyses into Action,
sending Notifications to end
users.
• Trigger Work Orders in CMMS
LIMS
Oil Analysis
PI Coresight - Asset Health
Dashboard
PI AF
DataBase
Information Analysis
PI AF Event
Notifications
Manual
Process
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 11
Interfaces
• Jigsaw-JHealthTM – PI SystemTM
• LIMS - PI SystemTM (Laboratory
Information Management
System)
Local PITM Server
More than 1,800 Sensors
are being Polled and
stored every 1 minute in
PI Tags on the PI Server.
More than 3,000 PI tags are collecting Oil data
to do Analysis of Information of the haul truck
fleet systems.
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 12
What to do with all this data?
A large amount of data is being
collected and stored every minute
24x7.
but….
How are we going to make sense of
it ??
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 13
Asset FrameworkTM Structure
Predictive analyses and calculations are
performed on the PI Server, in Real Time
for all 34 Trucks
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 14
Example: Monitoring Suspension System
• Components to analyze:
• Rear Suspension Struts
• Variables:
• Left Rear Pressure
• Right Rear Pressure
• Ground Speed
• Payload Status
• Condition for Analysis: Trend Front and
Rear Suspension Cylinder differential
pressures (RH minus LH) when truck is
traveling empty.
• Expected Values should remain constant
around 50psi.
Benefits on this Analysis:
- To Schedule Down Time for suspension
cylinders pressure adjust.
- Cost Un-schedule vs Schedule is 2:1
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 15
Displaying the data
PI Coresight™ - Dashboard
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 16
Sending Alerts to End Users and triggering Work Orders
• Using PI System to APM Plug-in to
trigger WOs in Oracle eAM
• Triggering Event Alerts using
Notifications
email
Notification
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Change Management
• Maintain communication with stakeholders.
• Involve end users and subject matter expert during the
development.
• Showing the end users the benefits in real time.
• Collecting and adjusting information to eliminate false
positives.
• Develop a formal process for decision making.
• Tracking and communicating realized benefits.
17
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 18
Future
• Esri ArcGIS and PI System integration will enable us to
do Operational Performance Analysis in real time.
Example: Monitoring
Engine Temperature
to detect Where and
Why and check if they
are related to certain
operational behaviors
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Benefits so far
• Reduced Risk. Less people exposed to hazards in the field.
• Improved information quality and data analysis.
• Faster analysis of large amounts of data and more accurate
results.
• Increased capacity for early detection of potential failures.
• Reduced number of potential failures (increased) MTBF.
• Reduced response time (reduced MTTR).
• Contributed to improved Reliability and Availability.
• Contributed to Maintenance and Downtime Cost reduction.
19
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 20
It’s a Team Work
• Field Maintenance Team
• Reliability Engineering
• Fleet Management Dispatch
• Mining Information Technology
• Vendors (OSIsoft TM,
CaterpillarTM, HexagonMiningTM,
BentleyTM)
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Picture / Image
RESULTSCHALLENGE SOLUTION
COMPANY and GOAL
Company
Logo
Using PI System for Real-Time
Haul Truck Health Monitoring
Barrick Gold Pueblo Viejo, the largest producer of gold in
the Caribbean, wanted to improve the Asset Health
Monitoring system for the Haul Truck fleet using real-time
information to Improve Maintenance Efficiency and Costs.
To provide real-time
information of 34 Haul Truck
using the installed systems &
minimum Investment.
On-board sensor information
of haul truck are processed
in real-time Using PI System,
notifying about potential
failures in real-time .
Reliability was increased,
maintenance and availability
were optimized and capacity
to detect potential failures
was improved.
• "We used to use the in-vehicle
sensors to investigate, post-
mortem, why a truck failure had
happened"
• “Now We can be one step ahead
of a failure and be more proactive”
• Able to detect & address failures
• Scalability to other fleet and sites
• Cost avoidance over $ 500,000
(Estimate in 2nd half of 2017)
• Reduce # of failures by 30% in
Engine, Suspensions and Brakes
• Reliability, Monitoring Condition,
Maintenance and Planners often
relied on incomplete or delayed
information to make decisions
rather than on real time data.
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Contact Information
Alejandro S. Zappa
azappa@barrick.com
a_zeta@hotmail.com
Maintenance Reliability Engineer
Barrick Gold – Pueblo Viejo
Jose Crespo
jcrespo@barrick.com
MIT Analyst
Barrick Gold – Pueblo Viejo
22
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 23
Questions
Please wait for the
microphone before asking
your questions
Please remember to…
Complete the Online Survey
for this session
State your
name & company
http://bit.ly/uc2017-app
© Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@
Thank You

Más contenido relacionado

La actualidad más candente

Monitor Kubernetes in Rancher using InfluxData
Monitor Kubernetes in Rancher using InfluxDataMonitor Kubernetes in Rancher using InfluxData
Monitor Kubernetes in Rancher using InfluxDataInfluxData
 
Efficiently Triaging CI Pipelines with Apache Spark: Mixing 52 Billion Events...
Efficiently Triaging CI Pipelines with Apache Spark: Mixing 52 Billion Events...Efficiently Triaging CI Pipelines with Apache Spark: Mixing 52 Billion Events...
Efficiently Triaging CI Pipelines with Apache Spark: Mixing 52 Billion Events...Databricks
 
Reducing the Cost of Project Change by Peter Timler, West-Cascadia Consultants
Reducing the Cost of Project Change by Peter Timler, West-Cascadia ConsultantsReducing the Cost of Project Change by Peter Timler, West-Cascadia Consultants
Reducing the Cost of Project Change by Peter Timler, West-Cascadia ConsultantsAVEVA Group plc
 
AVEVA Integrated Shipbuilding Solution by Robert Pesut, Brodosplit
AVEVA Integrated Shipbuilding Solution by Robert Pesut, BrodosplitAVEVA Integrated Shipbuilding Solution by Robert Pesut, Brodosplit
AVEVA Integrated Shipbuilding Solution by Robert Pesut, BrodosplitAVEVA Group plc
 
Mining indaba 2015 presentation ibm
Mining indaba 2015 presentation  ibmMining indaba 2015 presentation  ibm
Mining indaba 2015 presentation ibmElizabeth Thomas
 
Streaming Event Time Partitioning with Apache Flink and Apache Iceberg - Juli...
Streaming Event Time Partitioning with Apache Flink and Apache Iceberg - Juli...Streaming Event Time Partitioning with Apache Flink and Apache Iceberg - Juli...
Streaming Event Time Partitioning with Apache Flink and Apache Iceberg - Juli...Flink Forward
 
A True Story About Database Orchestration
A True Story About Database OrchestrationA True Story About Database Orchestration
A True Story About Database OrchestrationInfluxData
 
How to Deliver a Critical and Actionable Customer-Facing Metrics Product with...
How to Deliver a Critical and Actionable Customer-Facing Metrics Product with...How to Deliver a Critical and Actionable Customer-Facing Metrics Product with...
How to Deliver a Critical and Actionable Customer-Facing Metrics Product with...InfluxData
 
Introduction to DI Rig Analytics
Introduction to DI Rig AnalyticsIntroduction to DI Rig Analytics
Introduction to DI Rig AnalyticsDrillinginfo
 
Kapacitor Stream Processing
Kapacitor Stream ProcessingKapacitor Stream Processing
Kapacitor Stream ProcessingInfluxData
 
Industrial production process visualization with the Elastic Stack in real-ti...
Industrial production process visualization with the Elastic Stack in real-ti...Industrial production process visualization with the Elastic Stack in real-ti...
Industrial production process visualization with the Elastic Stack in real-ti...Elasticsearch
 

La actualidad más candente (12)

Monitor Kubernetes in Rancher using InfluxData
Monitor Kubernetes in Rancher using InfluxDataMonitor Kubernetes in Rancher using InfluxData
Monitor Kubernetes in Rancher using InfluxData
 
Efficiently Triaging CI Pipelines with Apache Spark: Mixing 52 Billion Events...
Efficiently Triaging CI Pipelines with Apache Spark: Mixing 52 Billion Events...Efficiently Triaging CI Pipelines with Apache Spark: Mixing 52 Billion Events...
Efficiently Triaging CI Pipelines with Apache Spark: Mixing 52 Billion Events...
 
Reducing the Cost of Project Change by Peter Timler, West-Cascadia Consultants
Reducing the Cost of Project Change by Peter Timler, West-Cascadia ConsultantsReducing the Cost of Project Change by Peter Timler, West-Cascadia Consultants
Reducing the Cost of Project Change by Peter Timler, West-Cascadia Consultants
 
AVEVA Integrated Shipbuilding Solution by Robert Pesut, Brodosplit
AVEVA Integrated Shipbuilding Solution by Robert Pesut, BrodosplitAVEVA Integrated Shipbuilding Solution by Robert Pesut, Brodosplit
AVEVA Integrated Shipbuilding Solution by Robert Pesut, Brodosplit
 
Mining indaba 2015 presentation ibm
Mining indaba 2015 presentation  ibmMining indaba 2015 presentation  ibm
Mining indaba 2015 presentation ibm
 
Streaming Event Time Partitioning with Apache Flink and Apache Iceberg - Juli...
Streaming Event Time Partitioning with Apache Flink and Apache Iceberg - Juli...Streaming Event Time Partitioning with Apache Flink and Apache Iceberg - Juli...
Streaming Event Time Partitioning with Apache Flink and Apache Iceberg - Juli...
 
A True Story About Database Orchestration
A True Story About Database OrchestrationA True Story About Database Orchestration
A True Story About Database Orchestration
 
How to Deliver a Critical and Actionable Customer-Facing Metrics Product with...
How to Deliver a Critical and Actionable Customer-Facing Metrics Product with...How to Deliver a Critical and Actionable Customer-Facing Metrics Product with...
How to Deliver a Critical and Actionable Customer-Facing Metrics Product with...
 
Introduction to DI Rig Analytics
Introduction to DI Rig AnalyticsIntroduction to DI Rig Analytics
Introduction to DI Rig Analytics
 
Cassandra in xPatterns
Cassandra in xPatternsCassandra in xPatterns
Cassandra in xPatterns
 
Kapacitor Stream Processing
Kapacitor Stream ProcessingKapacitor Stream Processing
Kapacitor Stream Processing
 
Industrial production process visualization with the Elastic Stack in real-ti...
Industrial production process visualization with the Elastic Stack in real-ti...Industrial production process visualization with the Elastic Stack in real-ti...
Industrial production process visualization with the Elastic Stack in real-ti...
 

Similar a Reliability Engineer and Training Manitenance Superintendent

Gain Meaningful Insights to Production by Associating Multiple Data Sources
Gain Meaningful Insights to Production by Associating Multiple Data SourcesGain Meaningful Insights to Production by Associating Multiple Data Sources
Gain Meaningful Insights to Production by Associating Multiple Data SourcesRockwell Automation
 
Manish tripathi-i-15-18-19-bia-ppt-oil-gas
Manish tripathi-i-15-18-19-bia-ppt-oil-gasManish tripathi-i-15-18-19-bia-ppt-oil-gas
Manish tripathi-i-15-18-19-bia-ppt-oil-gasA P
 
Journey to Cloud-Native: Continuous Delivery with Artificial Intelligence
Journey to Cloud-Native: Continuous Delivery with Artificial IntelligenceJourney to Cloud-Native: Continuous Delivery with Artificial Intelligence
Journey to Cloud-Native: Continuous Delivery with Artificial IntelligenceVMware Tanzu
 
Global C4IR-1 MasterClass Cambridge - Bose Intellisense 2017
Global C4IR-1 MasterClass Cambridge - Bose Intellisense 2017Global C4IR-1 MasterClass Cambridge - Bose Intellisense 2017
Global C4IR-1 MasterClass Cambridge - Bose Intellisense 2017Justin Hayward
 
Delivering Services Powered by Operational Data - Connected Services
Delivering Services Powered by Operational Data -  Connected ServicesDelivering Services Powered by Operational Data -  Connected Services
Delivering Services Powered by Operational Data - Connected ServicesOSIsoft, LLC
 
Applying Big Data Analytics on the Manufacturing Industry
Applying Big Data Analytics on the Manufacturing IndustryApplying Big Data Analytics on the Manufacturing Industry
Applying Big Data Analytics on the Manufacturing IndustryCantier Systems
 
Big Data Everywhere Chicago: Platfora - Practices for Customer Analytics on H...
Big Data Everywhere Chicago: Platfora - Practices for Customer Analytics on H...Big Data Everywhere Chicago: Platfora - Practices for Customer Analytics on H...
Big Data Everywhere Chicago: Platfora - Practices for Customer Analytics on H...BigDataEverywhere
 
Augmented OLAP Analytics for Big Data
Augmented OLAP Analytics for Big DataAugmented OLAP Analytics for Big Data
Augmented OLAP Analytics for Big DataTyler Wishnoff
 
Augmented OLAP for Big Data
Augmented OLAP for Big DataAugmented OLAP for Big Data
Augmented OLAP for Big DataLuke Han
 
Digital Transformation through Product and Service Innovation - Session Spons...
Digital Transformation through Product and Service Innovation - Session Spons...Digital Transformation through Product and Service Innovation - Session Spons...
Digital Transformation through Product and Service Innovation - Session Spons...Amazon Web Services
 
Strategic Direction Session: Deliver Next-Gen IT Ops with CA Mainframe Operat...
Strategic Direction Session: Deliver Next-Gen IT Ops with CA Mainframe Operat...Strategic Direction Session: Deliver Next-Gen IT Ops with CA Mainframe Operat...
Strategic Direction Session: Deliver Next-Gen IT Ops with CA Mainframe Operat...CA Technologies
 
Augmented OLAP for Big Data Analytics
Augmented OLAP for Big Data AnalyticsAugmented OLAP for Big Data Analytics
Augmented OLAP for Big Data AnalyticsTyler Wishnoff
 
Taking DevOps Monitoring to the Next Level - The 5 Step Guide to Monitoring N...
Taking DevOps Monitoring to the Next Level - The 5 Step Guide to Monitoring N...Taking DevOps Monitoring to the Next Level - The 5 Step Guide to Monitoring N...
Taking DevOps Monitoring to the Next Level - The 5 Step Guide to Monitoring N...Deborah Schalm
 
New Relic Infrastructure: Servers Transition August 2017
New Relic Infrastructure: Servers Transition August 2017New Relic Infrastructure: Servers Transition August 2017
New Relic Infrastructure: Servers Transition August 2017New Relic
 
Disrupt for Digital Transformation
Disrupt for Digital Transformation Disrupt for Digital Transformation
Disrupt for Digital Transformation JoAnna Cheshire
 
Splunk Discovery: Milan 2018 - Delivering New Visibility and Analytics for IT...
Splunk Discovery: Milan 2018 - Delivering New Visibility and Analytics for IT...Splunk Discovery: Milan 2018 - Delivering New Visibility and Analytics for IT...
Splunk Discovery: Milan 2018 - Delivering New Visibility and Analytics for IT...Splunk
 
OSIsoft White Paper "Impacting the Bottom Line" in O&G
OSIsoft White Paper "Impacting the Bottom Line" in O&GOSIsoft White Paper "Impacting the Bottom Line" in O&G
OSIsoft White Paper "Impacting the Bottom Line" in O&GTjeerd Zwijnenberg
 
Synergize Strategies for Greater Success in Automotive
Synergize Strategies for Greater Success in AutomotiveSynergize Strategies for Greater Success in Automotive
Synergize Strategies for Greater Success in AutomotivePlex Systems
 
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...Big Data Spain
 

Similar a Reliability Engineer and Training Manitenance Superintendent (20)

Gain Meaningful Insights to Production by Associating Multiple Data Sources
Gain Meaningful Insights to Production by Associating Multiple Data SourcesGain Meaningful Insights to Production by Associating Multiple Data Sources
Gain Meaningful Insights to Production by Associating Multiple Data Sources
 
Manish tripathi-i-15-18-19-bia-ppt-oil-gas
Manish tripathi-i-15-18-19-bia-ppt-oil-gasManish tripathi-i-15-18-19-bia-ppt-oil-gas
Manish tripathi-i-15-18-19-bia-ppt-oil-gas
 
Journey to Cloud-Native: Continuous Delivery with Artificial Intelligence
Journey to Cloud-Native: Continuous Delivery with Artificial IntelligenceJourney to Cloud-Native: Continuous Delivery with Artificial Intelligence
Journey to Cloud-Native: Continuous Delivery with Artificial Intelligence
 
Global C4IR-1 MasterClass Cambridge - Bose Intellisense 2017
Global C4IR-1 MasterClass Cambridge - Bose Intellisense 2017Global C4IR-1 MasterClass Cambridge - Bose Intellisense 2017
Global C4IR-1 MasterClass Cambridge - Bose Intellisense 2017
 
Delivering Services Powered by Operational Data - Connected Services
Delivering Services Powered by Operational Data -  Connected ServicesDelivering Services Powered by Operational Data -  Connected Services
Delivering Services Powered by Operational Data - Connected Services
 
Applying Big Data Analytics on the Manufacturing Industry
Applying Big Data Analytics on the Manufacturing IndustryApplying Big Data Analytics on the Manufacturing Industry
Applying Big Data Analytics on the Manufacturing Industry
 
Big Data Everywhere Chicago: Platfora - Practices for Customer Analytics on H...
Big Data Everywhere Chicago: Platfora - Practices for Customer Analytics on H...Big Data Everywhere Chicago: Platfora - Practices for Customer Analytics on H...
Big Data Everywhere Chicago: Platfora - Practices for Customer Analytics on H...
 
Augmented OLAP Analytics for Big Data
Augmented OLAP Analytics for Big DataAugmented OLAP Analytics for Big Data
Augmented OLAP Analytics for Big Data
 
Augmented OLAP for Big Data
Augmented OLAP for Big DataAugmented OLAP for Big Data
Augmented OLAP for Big Data
 
Digital Transformation through Product and Service Innovation - Session Spons...
Digital Transformation through Product and Service Innovation - Session Spons...Digital Transformation through Product and Service Innovation - Session Spons...
Digital Transformation through Product and Service Innovation - Session Spons...
 
Strategic Direction Session: Deliver Next-Gen IT Ops with CA Mainframe Operat...
Strategic Direction Session: Deliver Next-Gen IT Ops with CA Mainframe Operat...Strategic Direction Session: Deliver Next-Gen IT Ops with CA Mainframe Operat...
Strategic Direction Session: Deliver Next-Gen IT Ops with CA Mainframe Operat...
 
Augmented OLAP for Big Data Analytics
Augmented OLAP for Big Data AnalyticsAugmented OLAP for Big Data Analytics
Augmented OLAP for Big Data Analytics
 
Taking DevOps Monitoring to the Next Level - The 5 Step Guide to Monitoring N...
Taking DevOps Monitoring to the Next Level - The 5 Step Guide to Monitoring N...Taking DevOps Monitoring to the Next Level - The 5 Step Guide to Monitoring N...
Taking DevOps Monitoring to the Next Level - The 5 Step Guide to Monitoring N...
 
New Relic Infrastructure: Servers Transition August 2017
New Relic Infrastructure: Servers Transition August 2017New Relic Infrastructure: Servers Transition August 2017
New Relic Infrastructure: Servers Transition August 2017
 
Disrupt for Digital Transformation
Disrupt for Digital Transformation Disrupt for Digital Transformation
Disrupt for Digital Transformation
 
graymatter-pentaho-consulting-services-.pdf
graymatter-pentaho-consulting-services-.pdfgraymatter-pentaho-consulting-services-.pdf
graymatter-pentaho-consulting-services-.pdf
 
Splunk Discovery: Milan 2018 - Delivering New Visibility and Analytics for IT...
Splunk Discovery: Milan 2018 - Delivering New Visibility and Analytics for IT...Splunk Discovery: Milan 2018 - Delivering New Visibility and Analytics for IT...
Splunk Discovery: Milan 2018 - Delivering New Visibility and Analytics for IT...
 
OSIsoft White Paper "Impacting the Bottom Line" in O&G
OSIsoft White Paper "Impacting the Bottom Line" in O&GOSIsoft White Paper "Impacting the Bottom Line" in O&G
OSIsoft White Paper "Impacting the Bottom Line" in O&G
 
Synergize Strategies for Greater Success in Automotive
Synergize Strategies for Greater Success in AutomotiveSynergize Strategies for Greater Success in Automotive
Synergize Strategies for Greater Success in Automotive
 
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...
Stream Processing as Game Changer for Big Data and Internet of Things by Kai ...
 

Último

Introduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxIntroduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxupamatechverse
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSKurinjimalarL3
 
College Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service NashikCollege Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service NashikCall Girls in Nagpur High Profile
 
Model Call Girl in Narela Delhi reach out to us at 🔝8264348440🔝
Model Call Girl in Narela Delhi reach out to us at 🔝8264348440🔝Model Call Girl in Narela Delhi reach out to us at 🔝8264348440🔝
Model Call Girl in Narela Delhi reach out to us at 🔝8264348440🔝soniya singh
 
Microscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxMicroscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxpurnimasatapathy1234
 
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINE
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINEMANUFACTURING PROCESS-II UNIT-2 LATHE MACHINE
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINESIVASHANKAR N
 
Decoding Kotlin - Your guide to solving the mysterious in Kotlin.pptx
Decoding Kotlin - Your guide to solving the mysterious in Kotlin.pptxDecoding Kotlin - Your guide to solving the mysterious in Kotlin.pptx
Decoding Kotlin - Your guide to solving the mysterious in Kotlin.pptxJoão Esperancinha
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024hassan khalil
 
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).pptssuser5c9d4b1
 
Introduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptxIntroduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptxupamatechverse
 
Internship report on mechanical engineering
Internship report on mechanical engineeringInternship report on mechanical engineering
Internship report on mechanical engineeringmalavadedarshan25
 
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Serviceranjana rawat
 
Call Girls Delhi {Jodhpur} 9711199012 high profile service
Call Girls Delhi {Jodhpur} 9711199012 high profile serviceCall Girls Delhi {Jodhpur} 9711199012 high profile service
Call Girls Delhi {Jodhpur} 9711199012 high profile servicerehmti665
 
Porous Ceramics seminar and technical writing
Porous Ceramics seminar and technical writingPorous Ceramics seminar and technical writing
Porous Ceramics seminar and technical writingrakeshbaidya232001
 
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...Dr.Costas Sachpazis
 
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...Soham Mondal
 
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...ranjana rawat
 
Software Development Life Cycle By Team Orange (Dept. of Pharmacy)
Software Development Life Cycle By  Team Orange (Dept. of Pharmacy)Software Development Life Cycle By  Team Orange (Dept. of Pharmacy)
Software Development Life Cycle By Team Orange (Dept. of Pharmacy)Suman Mia
 

Último (20)

Introduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxIntroduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptx
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
 
College Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service NashikCollege Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
 
Model Call Girl in Narela Delhi reach out to us at 🔝8264348440🔝
Model Call Girl in Narela Delhi reach out to us at 🔝8264348440🔝Model Call Girl in Narela Delhi reach out to us at 🔝8264348440🔝
Model Call Girl in Narela Delhi reach out to us at 🔝8264348440🔝
 
Microscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxMicroscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptx
 
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINE
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINEMANUFACTURING PROCESS-II UNIT-2 LATHE MACHINE
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINE
 
Decoding Kotlin - Your guide to solving the mysterious in Kotlin.pptx
Decoding Kotlin - Your guide to solving the mysterious in Kotlin.pptxDecoding Kotlin - Your guide to solving the mysterious in Kotlin.pptx
Decoding Kotlin - Your guide to solving the mysterious in Kotlin.pptx
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024
 
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt
 
Introduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptxIntroduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptx
 
Exploring_Network_Security_with_JA3_by_Rakesh Seal.pptx
Exploring_Network_Security_with_JA3_by_Rakesh Seal.pptxExploring_Network_Security_with_JA3_by_Rakesh Seal.pptx
Exploring_Network_Security_with_JA3_by_Rakesh Seal.pptx
 
Internship report on mechanical engineering
Internship report on mechanical engineeringInternship report on mechanical engineering
Internship report on mechanical engineering
 
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
 
Call Girls Delhi {Jodhpur} 9711199012 high profile service
Call Girls Delhi {Jodhpur} 9711199012 high profile serviceCall Girls Delhi {Jodhpur} 9711199012 high profile service
Call Girls Delhi {Jodhpur} 9711199012 high profile service
 
Porous Ceramics seminar and technical writing
Porous Ceramics seminar and technical writingPorous Ceramics seminar and technical writing
Porous Ceramics seminar and technical writing
 
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
 
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
 
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
 
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
 
Software Development Life Cycle By Team Orange (Dept. of Pharmacy)
Software Development Life Cycle By  Team Orange (Dept. of Pharmacy)Software Development Life Cycle By  Team Orange (Dept. of Pharmacy)
Software Development Life Cycle By Team Orange (Dept. of Pharmacy)
 

Reliability Engineer and Training Manitenance Superintendent

  • 1. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Presented by Mine Haul Truck Health Monitoring System with PI System MBA. PMP. Eng. Alejandro S. Zappa Reliability Engineer Barrick Gold Corporation – Pueblo Viejo Mine
  • 2. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Agenda • Introduction • Company Background • Business Drivers • Implementation Details • Results Obtained and Business Impact • Summary • Conclusion 2
  • 3. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Barrick Gold Corporation 3 • 16 Operating Mines • 17,500 Employees • 5.52 Million oz in 2016 • AISC1 of $730/oz 1-Express in Press Release — Feb 15, 2017
  • 4. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 4 Barrick Gold Pueblo Viejo • More than 2,000 Employees • Production of 1,165,645 oz. in 2016 • 150,000 Tons mined and moved per day
  • 5. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 5 The Mining Fleet • Mining equipment: – 34 CAT789 Haul Trucks – 2 Hitachi 3600 Shovels – 3 CAT 994F Front Loaders – Other: 30 Support equipment • Annual production target for 2017 is 45 Million tons • Maintenance Annual Budget $56 Million • Truck Fleet – Budget: 32% of Annual Maint. budget ($17.8 Million) allocated to Haul Truck fleet – Truck Down Time cost is $700/Hr Truck Shop Tailings PIT 1 PIT 2 PIT 3
  • 6. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Business Drivers • Contribute to Safety • Improve Productive Availability • Increase Operational Efficiency • Reduce Scheduled & Non-Scheduled Downtime • Improve Asset Life Cycle Cost and meet Annual Budgets • Support Corporate Digitization Strategy 6
  • 7. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ How we monitor health in mining? 7 Monitoring Technician and Engineers, collect information from different sources, to trend and investigate why a truck could fail or had failed. Recommendations to take action is manual, time consuming task and some time late on time.
  • 8. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Finding Improvement opportunities on this traditional model 8 1 Improve Safety 2 Reduce time to collect or analyze information 6 Reduce Down- Time Cost 4 Enable the processing of high volumes of information 3 Visibility and ability to convert valuable data into Information 5Ability to predict potential failures
  • 9. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ The Challenge 9 • To monitor and manage the Asset Health of the Haul Truck Fleet, in Real Time, using available Installed Technologies, at a minimum investment to: – Digitize the on board information – Turn Information into Action – Produce faster analysis of more data, delivering more accurate results – Achieve the strategic Operational and Maintenance goals
  • 10. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Solution 10 • Interface Jhealth & LIMS to PI System • Develop calculations for predictive analytics • Create dashboards • Convert Analyses into Action, sending Notifications to end users. • Trigger Work Orders in CMMS LIMS Oil Analysis PI Coresight - Asset Health Dashboard PI AF DataBase Information Analysis PI AF Event Notifications Manual Process
  • 11. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 11 Interfaces • Jigsaw-JHealthTM – PI SystemTM • LIMS - PI SystemTM (Laboratory Information Management System) Local PITM Server More than 1,800 Sensors are being Polled and stored every 1 minute in PI Tags on the PI Server. More than 3,000 PI tags are collecting Oil data to do Analysis of Information of the haul truck fleet systems.
  • 12. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 12 What to do with all this data? A large amount of data is being collected and stored every minute 24x7. but…. How are we going to make sense of it ??
  • 13. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 13 Asset FrameworkTM Structure Predictive analyses and calculations are performed on the PI Server, in Real Time for all 34 Trucks
  • 14. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 14 Example: Monitoring Suspension System • Components to analyze: • Rear Suspension Struts • Variables: • Left Rear Pressure • Right Rear Pressure • Ground Speed • Payload Status • Condition for Analysis: Trend Front and Rear Suspension Cylinder differential pressures (RH minus LH) when truck is traveling empty. • Expected Values should remain constant around 50psi. Benefits on this Analysis: - To Schedule Down Time for suspension cylinders pressure adjust. - Cost Un-schedule vs Schedule is 2:1
  • 15. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 15 Displaying the data PI Coresight™ - Dashboard
  • 16. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 16 Sending Alerts to End Users and triggering Work Orders • Using PI System to APM Plug-in to trigger WOs in Oracle eAM • Triggering Event Alerts using Notifications email Notification
  • 17. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Change Management • Maintain communication with stakeholders. • Involve end users and subject matter expert during the development. • Showing the end users the benefits in real time. • Collecting and adjusting information to eliminate false positives. • Develop a formal process for decision making. • Tracking and communicating realized benefits. 17
  • 18. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 18 Future • Esri ArcGIS and PI System integration will enable us to do Operational Performance Analysis in real time. Example: Monitoring Engine Temperature to detect Where and Why and check if they are related to certain operational behaviors
  • 19. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Benefits so far • Reduced Risk. Less people exposed to hazards in the field. • Improved information quality and data analysis. • Faster analysis of large amounts of data and more accurate results. • Increased capacity for early detection of potential failures. • Reduced number of potential failures (increased) MTBF. • Reduced response time (reduced MTTR). • Contributed to improved Reliability and Availability. • Contributed to Maintenance and Downtime Cost reduction. 19
  • 20. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 20 It’s a Team Work • Field Maintenance Team • Reliability Engineering • Fleet Management Dispatch • Mining Information Technology • Vendors (OSIsoft TM, CaterpillarTM, HexagonMiningTM, BentleyTM)
  • 21. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Picture / Image RESULTSCHALLENGE SOLUTION COMPANY and GOAL Company Logo Using PI System for Real-Time Haul Truck Health Monitoring Barrick Gold Pueblo Viejo, the largest producer of gold in the Caribbean, wanted to improve the Asset Health Monitoring system for the Haul Truck fleet using real-time information to Improve Maintenance Efficiency and Costs. To provide real-time information of 34 Haul Truck using the installed systems & minimum Investment. On-board sensor information of haul truck are processed in real-time Using PI System, notifying about potential failures in real-time . Reliability was increased, maintenance and availability were optimized and capacity to detect potential failures was improved. • "We used to use the in-vehicle sensors to investigate, post- mortem, why a truck failure had happened" • “Now We can be one step ahead of a failure and be more proactive” • Able to detect & address failures • Scalability to other fleet and sites • Cost avoidance over $ 500,000 (Estimate in 2nd half of 2017) • Reduce # of failures by 30% in Engine, Suspensions and Brakes • Reliability, Monitoring Condition, Maintenance and Planners often relied on incomplete or delayed information to make decisions rather than on real time data.
  • 22. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Contact Information Alejandro S. Zappa azappa@barrick.com a_zeta@hotmail.com Maintenance Reliability Engineer Barrick Gold – Pueblo Viejo Jose Crespo jcrespo@barrick.com MIT Analyst Barrick Gold – Pueblo Viejo 22
  • 23. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ 23 Questions Please wait for the microphone before asking your questions Please remember to… Complete the Online Survey for this session State your name & company http://bit.ly/uc2017-app
  • 24. © Copyright 2017 OSIsoft, LLCUSERS CONFERENCE 2017 #OSIsoftUCosisoft@ Thank You

Notas del editor

  1. Good morning every one. My name is Alejandro Zappa. I’m Reliability engineer at Barrick Gold Corporaton and today I’ll present the Mine truck monitoring system we have implemented at Pueblo Viejo mine.
  2. Each truck has an on-board monitoring system: Jigsaw-Jhealth™ , collects OEM sensor & OEM Events Oil sample Analyses and Lubes consumption are manually processed. Certain data needs to be collected directly from the machine (VIMS™