ESTIMATION OF UNBALANCE COST DUE TO DEMAND PREDICTION ERRORS USING ARTIFICIAL NEURAL NETWORK

Abdullah Erdal TÜMER, Cankat YAVUZ, Sabri KOÇER

Öz


Estimation of energy demand is used as an important tool for decision makers determining company strategies and policies. Apart from this, the fact that the actual consumption differs from the forecast is harmful for the economy of the company and even for the economy of the big scale. In this study, it is aimed to estimate the imbalance aberration caused by demand forecast deviation with Artificial Neural Networks and to evaluate its results.

Anahtar Kelimeler


Artificial Neural Network, Demand Prediction, Unbalance cost, prediction, Energy Demand

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