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首页> 外文期刊>Journal of building performance simulation >Extraction of supervisory building control rules from model predictive control of windows in a mixed mode building
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Extraction of supervisory building control rules from model predictive control of windows in a mixed mode building

机译:从混合模式建筑的窗户模型预测控制中提取监督建筑控制规则

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摘要

Rule extraction is a promising technique for developing or fine-tuning supervisory control strategies in buildings. Three data mining techniques are examined that extract rules from offline model predictive control (MPC) results for a mixed mode building operated during the cooling season: generalized linear models (GLM), classification and regression trees (CART), and adaptive boosting. All rules were able to recover approximately 90% of the original optimizer energy savings under open loop tests, but the GLM-based rules saw significant performance degradation under simulated tests. CART and boost rules only degraded in performance by a few percentage points, still retaining the vast majority of optimizer savings (84% and 93% for the CART and boost rules, respectively). The results demonstrate that the proposed rule extraction techniques may allow building automation systems to achieve near-optimal supervisory control strategies without online MPC systems, although further research is required to broadly test applicability to more complex cases.
机译:规则提取是一种用于开发或微调建筑物监督控制策略的有前途的技术。考察了三种数据挖掘技术,这些技术可从离线模型预测控制(MPC)结果中提取规则,以供凉季期间使用的混合模式建筑:广义线性模型(GLM),分类和回归树(CART)以及自适应增强。在开环测试下,所有规则都可以恢复大约90%的原始优化器节能,但是在模拟测试下,基于GLM的规则发现性能明显下降。 CART和Boost规则的性能仅下降了几个百分点,仍然保留了绝大多数优化程序节省的成本(CART和Boost规则分别为84%和93%)。结果表明,提出的规则提取技术可以使楼宇自动化系统在没有在线MPC系统的情况下实现接近最佳的监督控制策略,尽管需要进一步的研究来广泛测试对更复杂案例的适用性。

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