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Probabilistic Power Consumption Modeling for Commercial Buildings Using Logistic Regression Markov Chain

机译:使用Logistic回归Markov链式商业建筑的概率功耗建模

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The total energy consumed by buildings takes up to 40% of U.S. energy use, in which a large portion is contributed by commercial buildings. Building performance optimization is desirable but requires accurate building models with uncertainties taken into account. This paper proposes a novel probabilistic modeling method using Logistic Regression Markov Chain (LRMC). The LRMC model enhances the performance of traditional Markov Chain (MC) models by adopting time-variant transition matrices calibrated using logistic regression with exogenous inputs. Compared with existing building models, the proposed model produces accurate multi-step modeling results with full probability distribution. The proposed probabilistic building model is tested using actual commercial building measurements and modeling performance is evaluated with two probabilisitc metrics. The results show that the LRMC model has higher accuracy than traditional MC model and Logistic Regression (LR) model in that it yields lower error scores under both evaluation metrics.
机译:建筑物消耗的总能量占美国能源使用的40%,其中大部分由商业建筑做出的贡献。建筑性能优化是可取的,但需要准确的建筑模型,考虑到不确定性。本文提出了一种使用Logistic回归Markov链(LRMC)的概率模型方法。 LRMC模型通过采用使用逻辑回归与外源输入校准的时变转换矩阵来增强传统马尔可夫链(MC)模型的性能。与现有的建筑模型相比,所提出的模型具有完全概率分布的准确的多步模型结果。使用实际的商业建筑测量测试,使用实际的商业建筑测量进行测试,并使用两个概率测量进行建模性能。结果表明,LRMC模型比传统的MC模型和逻辑回归(LR)模型具有更高的精度,因为它在评估度量标准下产生较低的错误分数。

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