DOI:​10.1016/J.ENERGY.2015.11.079
Corpus ID: 110694946
Prediction of heat load in district heating systems by Support Vector Machine with Firefly searching algorithm
Eiman Tamah Al-Shammari, Afram Keivani, +4 authorsSudheer Ch
Published 2016
Engineering
Energy
District heating systems operation can be improved by control strategies. One of the options is the introduction of predictive control model. Predictive models of heat load can be applied to improve… Expand
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73 Citations
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This paper presents and compares two machine learning approaches – artificial neural networks and neuro-fuzzy and in general, both proposed models can forecast day ahead heat demand relatively accurately.Expand
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