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Influencer-defaulter mutation-based optimization algorithms for predicting electricity prices

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  • Singh, Priyanka
  • Kottath, Rahul

Abstract

Efficient electricity price forecasting plays a significant role in our society. In this paper, a novel influencer-defaulter mutation (IDM) mutation operator has been proposed. The IDM operator has been combined with six well-known optimization algorithms to create mutated optimization algorithms whose performance has been tested on twenty-four standard benchmark functions. Further, the artificial neural network is integrated with mutated optimization algorithms to solve the electricity price prediction problem. The policymakers can identify appropriate variables based on the predicted prices to help future market planning. The statistical results prove the efficacy of the IDM operator on the recent optimization algorithms.

Suggested Citation

  • Singh, Priyanka & Kottath, Rahul, 2022. "Influencer-defaulter mutation-based optimization algorithms for predicting electricity prices," Utilities Policy, Elsevier, vol. 79(C).
  • Handle: RePEc:eee:juipol:v:79:y:2022:i:c:s0957178722001084
    DOI: 10.1016/j.jup.2022.101444
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    References listed on IDEAS

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