Affiliation:
1. School of Business UPES Dehradun India
2. School of Engineering Institute for Energy Systems University of Edinburgh Edinburgh UK
3. Jaipuria Institute of Management Noida India
4. Jindal Global Business School (JGBS) O.P. Jindal Global University Sonipat India
Abstract
AbstractThis research investigates the short‐term (ST) forecasting performance of the daily prices of the Indian exchange‐traded day‐ahead (DAM) market, divided into 13 bid areas, each consisting of states with varied fundamentals. Forecasts are built employing SARIMA (seasonal autoregressive integrated moving average) and MLP (multilayer perceptron) methods. Moreover, the robustness and performance of the model is compared using the lowest error and the Diebold–Mariano (DM) test statistic values. The results indicates that the SARIMA model has high prediction accuracy with error values ranging from 1% to 5% with Southern region having the highest error of 4.53% and Northern having the least error of 1.27%. However, validation by the DM test suggests no statistical significant difference between the two models. The power generators, distribution companies, traders, policymakers, strategists and managers could use the findings for effective power management through proper planning.
Subject
General Energy,Economics and Econometrics
Cited by
5 articles.
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