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 Predictive Reliability Study Le Xu, Ph.D ., PE Quanta T echnology Predic tive Reliability T ask For ce  W orking Group on Distribution Relia bility 2013 IEEE PES Joint Technical Committee Meeting  January 15, 2013 • Memphis, TN, USA 

Predictive Reliability Study

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  • Predictive Reliability Study

    Le Xu, Ph.D., PEQuanta Technology

    Predictive Reliability Task ForceWorking Group on Distribution Reliability

    2013 IEEE PES Joint Technical Committee MeetingJanuary 15, 2013 Memphis, TN, USA

  • Outline Objectives

    Reliability modeling

    Analytical Simulation

    Monte Carlo Simulation

    Commercial Tools

    Challenges

  • Objectives To improve the reliability of a specific area or

    service territory to meet utilitys goals and tocomply with regulatory requirements.

    To improve the reliability of an area in the mostcost-effective way

    Identify projects that give more bang for the buck.

    Priority projects within certain budget.

    To take advantage of existing utility tools, toincrease efficiency, quality, and productivity.

  • Reliability modeling Develop a predictive reliability model of a

    system.

    The model is calibrated to represent currentsystem reliability.

  • Reliability Modeling Reliability models are as good as power flow

    models

    Component reliability parameters:

    Failure rates

    Repair times

    Switching times

  • Analytical Simulation Input

    System topology

    Device locations

    Component reliability parameters

    Output

    Momentary interruptions

    Sustained interruptions

    Outage duration

    Reliability indices

  • Analytical Simulation All Faults

    Fault occurs

    Inrush current causes voltage sag

    Reclosing attempts to clear fault

    Sustained Faults Only

    Protection device trips and locks out

    Automated switching occurs

    Manual switching occurs

    Fault is repaired

  • Analytical Simulation Simulate each contingency

    Determine the impact on each component

    Weight the impact by its frequency of occurrence.

  • Decision Making Analysis of historical outage data to identify the

    main causes of outages and the most efficientalternatives for improving reliability.

    Evaluate the impact of a comprehensive set ofprojects and select the most cost-effectivealternatives for improving the reliability of system.

    Estimate the expected reliability of the system dueto the progressive implementation of the optimalmix of projects.

  • Risk Analytical simulation for expected value analysis

    Reliability varies naturally each year

    Faults may occur more or less often, in different locations

    Protection and switching may vary in effectiveness

    Repair times may be shorter or longer

    Storms may be more or less prevalent

    Changes in data error rate

    Monte Carlo simulation for risk analysis

  • Monte Carlo Simulation

    Results of a SAIDI Risk Analysis

  • Commercial Tools CymeDist

    SynerGEE

    WindMil

    PSS/Adept DRA

    NEPLAN

    Power Factory

    FeederAll

  • Challenges Aging Infrastructure?

    Distribution automation?

    Distribution energy resources?

    Micro grid?

    Storm?

  • Summary Predictive reliability study can help utilities reduce

    cost, improve reliability, and more effectively managerisk.

    You dont need good data to get started, but better datayields more confidence in results.

    Predictive reliability study methodologies need toadapt to the new trending in distribution systems.

  • Thank You!