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ANN-Based City Heat Demand Forecast

机译:安妮城市热需求预测

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This paper discusses the importance of accurate forecasting tools in solving power system planning, modelling and optimization tasks. While artificial neural networks are widely considered to be one of the best prediction methods, their accuracy can vary greatly depending on the network structure and parameters. A method of experimentally finding the best ANN parameters has been offered and tested on heat demand forecasting. Some value of the benefits of increased prediction accuracy on the operation of CHP plants has been identified.
机译:本文探讨了准确的预测工具在解决电力系统规划,建模和优化任务方面的重要性。虽然人工神经网络被广泛认为是最佳预测方法之一,但它们的准确性可以根据网络结构和参数而变化很大。在热需求预测上提供了一种通过实验找到最佳ANN参数的方法。已经鉴定了对CHP工厂操作的提高预测准确性提高的一些价值。

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