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  <titleInfo>
    <title>Solution of Optimal Reactive Power Dispatch Considering Integration of  Uncertain Wind and Solar Power</title>
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  <name type="personal">
    <namePart>Abdul Jabbar  16-17MPE04 Supervisor-Prof. Dr. Muhammad Usman Keerio</namePart>
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    <place>
      <placeTerm type="text">Nawabshah</placeTerm>
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    <publisher>QUEST</publisher>
    <dateIssued>2021</dateIssued>
    <issuance>monographic</issuance>
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ABSTRACT

'I he e ·potential growth of unpredictable renewable power production sources in the power grid results in hard to regulate reactive   power. The ultimate goal of ORPD is to compute the optimal voltage level of all the generators except reference bus, off-nominal turns ratio of transformer and MYAR injection of shunt var compensators (SVC) values. More realistically, ORPD problem is a multi-objective problem. Therefore, in this paper, simultaneous minimization of active power loss, voltage deviation and operating cost of renewable and thermal generators are considered the objective functions (formulation of three cases of two and three objective functions). Usually, renewable power generators such as wind and solar and load demand are uncertain. Therefore, probabilistic mathematical modeling such as normal, Weibull and lognormal probability distribution functions (PDFs) are implemented to model the generation and demand. to generate 1000 scenarios with the help of Monte-Carlo simulation (MCS) techniques. Afterward, to reduce the computational burden, scenario reduction technique is applied to pick twenty­ four representative scenarios. These twenty-four scenarios are solved by using the non­ dominated sorting genetic algorithm (NSGA-Il). IEEE 30 bus test system is considered to achieve effectiveness and superiority of NSGA-11. Five stochastic study cases have been analyzed in the simulation results. Simulation results indicate that the proposed algorithm
is used to detect the global optimal solution of ORPD problem.

Keywords: Optimal reactive power dispatch, Operating cost of power, Multi-objective optimization, Renewable energy resources.











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  <subject>
    <topic>Department of Electrical Engineering</topic>
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  <identifier type="uri">https://tinyurl.com/2hhzpztc</identifier>
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    <url>https://tinyurl.com/2hhzpztc</url>
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