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ANN MODEL OF A DIRECT-FIRED ABSORPTION CHILLER SYSTEM FOR ENERGY EVALUATION

机译:能源直接吸收式冷却器系统的神经网络模型

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摘要

A direct-fired absorption chiller system rejects more heat energy than a vapour-compression chiller system of similar capacity. The combined use of fuel energy and electricity consumption is an important criterion in its performance evaluation. Many current research efforts on absorption chiller system are related to the search of an optimal supervisory control strategy to minimize the energy costs. System simulation has been a conventional approach for the investigation. However, the task of developing an accurate system model through the component-modelling approach can be tedious. Oversimplification in the process, and the nonlinear structure of the equation set as a result, are often the limitations for reaching reliable converging solutions. The system-based artificial neural network (ANN) modelling approach appears to be an attractive alternative. This article describes the process of deriving an ANN model of a commercial direct-fired double-effect absorption chiller system. The techniques and the ways to overcome the difficulties in the training process are discussed.
机译:直燃吸收式制冷机系统比类似容量的蒸汽压缩制冷机系统能吸收更多的热能。燃料能源和电力消耗的联合使用是其性能评估的重要标准。当前在吸收式制冷机系统上的许多研究工作都与寻求最佳的监督控制策略以最小化能源成本有关。系统仿真已成为研究的常规方法。但是,通过组件建模方法开发准确的系统模型的任务可能很繁琐。过程中的过度简化以及结果导致的方程组的非线性结构通常是获得可靠收敛解的限制。基于系统的人工神经网络(ANN)建模方法似乎是一种有吸引力的替代方法。本文介绍了推导商业直接燃烧双效吸收式制冷机系统的ANN模型的过程。讨论了克服培训过程中的困难的技术和方法。

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