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首页> 外文期刊>International Journal of Energy and Power Engineering >Predicting Heat Demand for a District Heating Systems
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Predicting Heat Demand for a District Heating Systems

机译:预测区域供热系统的热需求

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摘要

Poland is one of the heaviest users of district heating systems in Europe, and those district heating systems are heated mainly by coal. Sustainable development of district heating systems in Poland including improving quality of environment, economic of heat production and security of heat supply is in close connection with increasing of energy efficiency. Heat production and heat distribution plays important role in national energy balance. Additional increasing of energy efficiency in district heating systems need detail forecasts for future heat consumption in scale of individual district heating system and for systems in whole country. Accurate forecast give possibility for increasing efficiency of heat production, decreasing fuel consumption and connected with it emission decreasing from combustion products to the atmosphere. Heat production efficiency can be optimized through the use of appropriate procedures for running heat sources alongside short-term heat demand forecasting combined with preparation for adjusting heat source work parameters to the predicted heat load for a few hours hence. The artificial neural networks model delivers good forecasting results. The accuracy of the results depends on the kind of network, its architecture, the size and type of input data as well as the forecasting period. Forecasting accuracy within a 3-5% margin of error is sufficient to steer heat source operations. Described forecasting methods can be use as a good tool to regulate district heating networks and heat sources.
机译:波兰是欧洲区域供热系统最重的用户之一,这些区域供热系统主要由煤炭供暖。波兰区域供热系统的可持续发展,包括改善环境质量,供热经济性和供热安全性,与提高能源效率密切相关。热量生产和热量分布在国家能源平衡中起着重要作用。区域供热系统中能源效率的进一步提高需要详细预测,以单个区域供热系统和整个国家的规模来预测未来的热量消耗。准确的预测为提高热量生产效率,减少燃料消耗以及与之相关的从燃烧产物到大气的排放减少提供了可能性。通过使用适当的运行热源的程序以及短期的热量需求预测,并结合准备将热源工作参数调整到预计的热负荷几个小时的方法,可以优化热生产效率。人工神经网络模型可提供良好的预测结果。结果的准确性取决于网络的类型,其体系结构,输入数据的大小和类型以及预测周期。在3-5%的误差范围内的预测精度足以控制热源运行。所描述的预测方法可以用作调节区域供热网络和热源的良好工具。

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