Model predictive control for smart buildings: a simulation approach within Indian context

Author:

Pandey Kamal,Basu Bhaskar

Abstract

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.

Publisher

Emerald

Subject

Building and Construction,Architecture,Human Factors and Ergonomics

Reference46 articles.

1. Improved supply chain management based on hybrid demand forecasts;Applied Soft Computing,2007

2. Theory and applications of HVAC control systems – a review of model predictive control (MPC);Building and Environment,2014

3. Model predictive control of integrated room automation considering occupants preference,2015

4. Application of SARIMAX model to forecast daily sales in food retail industry;International Journal of Operations Research and Information Systems,2016

5. Thermal environmental conditions for human occupancy;ASHRAE Standard 55,2004

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