智能建筑的模型预测控制:印度环境下的模拟方法

IF 1.6 Q3 MANAGEMENT
Facilities Pub Date : 2023-11-07 DOI:10.1108/f-11-2022-0141
Kamal Pandey, Bhaskar Basu
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引用次数: 0

摘要

在发展中国家的背景下,印度建筑需要进一步的研究,以优化能源需求,减少能源浪费,从而减少碳排放。此外,随着信息和通信技术的不断进步,智能设备的成本降低,导致了模型预测控制(MPC)策略可以轻松实施的环境。本研究旨在提出一些先发制人的措施,以尽量减少能源成本,同时确保居住者的热舒适,从而为建筑结构提供更好的绿色解决方案。提出了一种基于仿真的多输入多输出MPC策略。通过使用各种控制变量同时控制室内温度、湿度和照明,实现了优化能耗和可接受的热舒适的双重目标功能。基于回归的光照模型和基于外源输入的季节性自回归移动平均(SARMAX)的温度和湿度模型被选择作为预测模型,并结合了四种不同的控制水平。本研究中的数学方法在能源成本节约和满意的居住者舒适度之间保持了最佳权衡。所提出的控制机制建立了输出变量相对于控制变量和干扰变量的关系。结果表明,基于SARMAX和回归的预测模型在精度、稳定性和性能上都是最佳的拟合模型。通过采用建议的方法,可以在一天中的某些时间内实现显著的能源节约。本研究是针对一个特定的公司实体进行的,未来的分析可以针对印度其他公司或住宅建筑以及其他地理环境进行。包括敏感性分析和非线性预测模型是未来的另一个领域。本研究提出了一种动态MPC策略,使用五个干扰变量进一步提高了整体性能和准确性。与以往的MPC研究相比,本研究采用了SARMAX模型,这是对理论文献的新颖贡献。在计算中使用了四个级别的控制区:预冷区、严格区、温和区和宽松区,以使预测平均投票指数保持在可接受的阈值范围内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model predictive control for smart buildings: a simulation approach within Indian context
Purpose In the context of a developing country, Indian buildings need further research to channelize energy needs optimally to reduce energy wastage, thereby reducing carbon emissions. Also, reduction in smart devices’ costs with sequential advancements in Information and Communication Technology have resulted in an environment where model predictive control (MPC) strategies can be easily implemented. This study aims to propose certain preemptive measures to minimize the energy costs, while ensuring the thermal comfort for occupants, resulting in better greener solutions for building structures. Design/methodology/approach A simulation-based multi-input multi-output MPC strategy has been proposed. A dual objective function involving optimized energy consumption with acceptable thermal comfort has been achieved through simultaneous control of indoor temperature, humidity and illumination using various control variables. A regression-based lighting model and seasonal auto-regressive moving average with exogenous inputs (SARMAX) based temperature and humidity models have been chosen as predictor models along with four different control levels incorporated. Findings The mathematical approach in this study maintains an optimum tradeoff between energy cost savings and satisfactory occupants’ comfort levels. The proposed control mechanism establishes the relationships of output variables with respect to control and disturbance variables. The SARMAX and regression-based predictor models are found to be the best fit models in terms of accuracy, stability and superior performance. By adopting the proposed methodology, significant energy savings can be accomplished during certain hours of the day. Research limitations/implications This study has been done on a specific corporate entity and future analysis can be done on other corporate or residential buildings and in other geographical settings within India. Inclusion of sensitivity analysis and non-linear predictor models is another area of future scope. Originality/value This study presents a dynamic MPC strategy, using five disturbance variables which further improves the overall performance and accuracy. In contrast to previous studies on MPC, SARMAX model has been used in this study, which is a novel contribution to the theoretical literature. Four levels of control zones: pre-cooling, strict, mild and loose zones have been used in the calculations to keep the Predictive Mean Vote index within acceptable threshold limits.
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来源期刊
Facilities
Facilities MANAGEMENT-
CiteScore
4.40
自引率
17.40%
发文量
46
期刊介绍: The journal offers thorough, independent and expert papers to inform relevant audiences of thinking and practice in the field, including topics such as: ■Intelligent buildings ■Post-occupancy evaluation (building evaluation) ■Relocation and change management ■Sick building syndrome ■Ergonomics and workplace design ■Environmental and workplace psychology ■Briefing, design and construction ■Energy consumption ■Quality initiatives ■Infrastructure management
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