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A distributed approach to model-predictive control of radiant comfort delivery systems in office spaces with localized thermal environments

机译:具有局部热环境的办公室空间中辐射舒适性输送系统的模型预测控制的分布式方法

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This paper introduces a new multi-agent system approach to optimal control of high performance buildings and presents algorithms for both distributed system identification and distributed model predictive control (DMPC). For the system identification, each thermal zone is divided into sub-systems, and a parameter set for each sub-system is first estimated individually, and then integrated into an inverse model for the whole thermal zone using the dual decomposition algorithm. For the DMPC, a distributed optimization algorithm inspired by the Proximal Jacobian Alternating Direction Method of Multipliers (PJ-ADMM) is deployed and multiple MPCs run iteratively while exchanging control input information until they converge. The developed algorithms are tested using field data from an occupied open-plan office space with a radiant floor system with distributed sensing, control, and data communication capabilities for localized comfort delivery. With this tractable approach, agents solve individual optimization problems in parallel, through information exchange and broadcasting, with a smaller scale of the input and constraints, facilitating optimal solutions with improved efficiency that are scalable to different building applications. Using a data-driven model and weather forecast, the DMPC controller is implemented to optimize the operation of an air-cooled chiller while providing different operative temperature bounds for each radiant floor loop. The radiant comfort delivery system with predictive control is capable of providing localized thermal environments while achieving significant energy savings. For the system and climate under consideration, results from the building operation during the cooling season, show 27% reduction in electricity consumption compared to baseline feedback control. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文介绍了一种新的多主体系统方法来对高性能建筑物进行最佳控制,并提出了用于分布式系统识别和分布式模型预测控制(DMPC)的算法。为了进行系统识别,将每个热区划分为多个子系统,然后分别估算每个子系统的参数集,然后使用对偶分解算法将其集成到整个热区的逆模型中。对于DMPC,部署了一种基于乘数的雅各布近交交替方向法(PJ-ADMM)启发的分布式优化算法,并且多个MPC迭代运行,同时交换控制输入信息,直到收敛为止。使用从占用的开放式办公室空间中的现场数据和辐射地板系统对现场开发的算法进行测试,该辐射地板系统具有分布式感测,控制和数据通信功能,可实现局部舒适度。使用这种易于处理的方法,代理可以通过较小的输入和约束条件,通过信息交换和广播并行解决各个优化问题,从而促进可提高效率的最佳解决方案,这些解决方案可扩展到不同的建筑应用。使用数据驱动的模型和天气预报,DMPC控制器可实现优化风冷式制冷机的运行,同时为每个辐射地板回路提供不同的工作温度范围。具有预测性控制的辐射舒适度输送系统能够提供局部热环境,同时实现显着的节能效果。对于所考虑的系统和气候,在冷却季节期间建筑物运行的结果表明,与基准反馈控制相比,耗电量减少了27%。 (C)2018 Elsevier B.V.保留所有权利。

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