Parametric Analysis and Multi-Objective Optimization for Energy-Efficient and High-Performance HVAC Air filter Design and Selection

Mohammed Al-Azba, M. Mahgoub
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Abstract

HVAC systems are notorious for their high energy consumption in buildings, particularly in regions with extreme cooling or heating demands. Air filters play a vital role in these systems, affecting both energy efficiency and indoor air quality. However, high-efficiency filters, due to their significant increase in airflow resistance, require excessive energy compared to low-efficiency filters. This poses a challenge in finding the optimal compromise between reducing energy consumption and enhancing indoor air quality. To address this challenge, a meticulous selection process is crucial in achieving a middle ground that satisfies both objectives. Proper sizing and design of air filters are therefore essential for successful HVAC projects. This paper introduces the utilization of optimization techniques as decision-support tools to determine the optimal design parameters of commonly used HVAC air filters under various scenarios. The developed model incorporates multiple objectives and design criteria, including life-cycle cost (LCC), filter size, and efficiency. By leveraging the Differential Evolution (DE) optimization technique, an algorithm is developed to forecast a range of optimal solutions (Pareto front) based on predefined system criteria and boundary conditions. The model is extensively tested and demonstrates exceptional performance in returning optimal solutions, in addition to the capability of narrowing down and converging to a single value. This methodology holds significant potential in assisting investment decisions concerning HVAC air filters, providing valuable insights for optimizing energy efficiency while ensuring satisfactory indoor air quality.
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节能高性能暖通空调空气过滤器设计与选择的参数分析与多目标优化
HVAC系统因其在建筑物中的高能耗而臭名昭著,特别是在具有极端冷却或加热需求的地区。空气过滤器在这些系统中起着至关重要的作用,影响着能源效率和室内空气质量。然而,与低效过滤器相比,高效过滤器由于其气流阻力显著增加,需要过多的能量。这对在减少能源消耗和提高室内空气质量之间找到最佳折衷方案提出了挑战。为了应对这一挑战,一个细致的选择过程对于实现一个同时满足两个目标的中间地带至关重要。因此,空气过滤器的适当尺寸和设计对于成功的暖通空调项目至关重要。本文介绍了如何利用优化技术作为决策支持工具,确定各种场景下常用暖通空调空气过滤器的最优设计参数。所开发的模型包含多个目标和设计标准,包括生命周期成本(LCC)、过滤器尺寸和效率。利用差分进化(DE)优化技术,开发了一种基于预定义的系统标准和边界条件预测一系列最优解(帕累托前)的算法。该模型经过了广泛的测试,并在返回最优解方面表现出卓越的性能,此外还具有缩小和收敛到单个值的能力。该方法在协助有关暖通空调空气过滤器的投资决策方面具有重大潜力,为优化能源效率提供了宝贵的见解,同时确保令人满意的室内空气质量。
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