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An Improved GA-KRR Nested Learning Approach for Refrigeration Compressor Performance Forecasting*

机译:改进的GA-KRR嵌套学习方法,用于制冷压缩机性能预测 *

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The long duration of refrigeration compressor performance tests is a key factor restricting the quality testing efficiency and the delivery times. To reduce the time of quality tests in the refrigeration compressor manufacturing systems, data-driven technology is used for forecasting the compressor performance using unsteady-state data in early test phase. The typical methods usually encapsulate two distinct blocks: input range selection and performance prediction. Such fixed and hand-crafted input range, which is crucial for the prediction accuracy and test time saving, may be a sub-optimal choice for diverse varieties of the compressors and prevent their usage for real-time applications. In this paper, we proposed a compressor performance forecasting approach using GA-KRR (genetic algorithm - kernel ridge regression algorithm) nested learning that has a heuristic design to automatically hunt the best input range and a nested learning design to fuse the automatic input range selection and performance prediction into a single learning body. The experimental results on real-world data show the outstanding performance of proposed approach compared with relative approaches, which indicates the test time can be reduced 75%.
机译:制冷压缩机性能测试的长时间是限制质量测试效率和交付时间的关键因素。为了减少制冷压缩机制造系统中的质量测试的时间,数据驱动技术用于在早期测试阶段使用不稳定状态数据预测压缩机性能。典型方法通常封装两个不同的块:输入范围选择和性能预测。这种固定和手工制作的输入范围对于预测精度和测试时间至关重要,可能是压缩机各种品种的次优选择,并防止它们对实时应用的用途。在本文中,我们提出了一种使用GA-KRR(遗传算法 - 内核回归算法)嵌套学习的压缩机性能预测方法,其具有启发式设计,可以自动捕获最佳输入范围和嵌套学习设计,融合自动输入范围选择和性能预测到一个学习机构。与相对方法相比,现实世界数据的实验结果显示了所提出的方法的出色性能,这表明测试时间可以减少75%。

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