Abstract

New functions and requirements of high performance building (HPB) being added and several regulations and certification conditions being reinforced steadily make it harder for designers to decide HPB designs alone. Although many designers wish to rely on HPB consultants for advice, not all projects can afford consultants. We expect that, in the near future, computer aids such as design expert systems can help designers by providing the role of HPB consultants. The effectiveness and success or failure of the solution offered by the expert system must be affected by the quality, systemic structure, resilience, and applicability of expert knowledge. This study aims to set the problem definition and category required for existing HPB designs, and to find the knowledge acquisition and representation methods that are the most suitable to the design expert system based on the literature review. The HPB design literature from the past 10 years revealed that the greatest features of knowledge acquisition and representation are the increasing proportion of computer-based data analytics using machine learning algorithms, whereas rules, frames, and cognitive maps that are derived from heuristics are conventional representation formalisms of traditional expert systems. Moreover, data analytics are applied to not only literally raw data from observations and measurement, but also discrete processed data as the results of simulations or composite rules in order to derive latent rule, hidden pattern, and trends. Furthermore, there is a clear trend that designers prefer the method that decision support tools propose a solution directly as optimizer does. This is due to the lack of resources and time for designers to execute performance evaluation and analysis of alternatives by themselves, even if they have sufficient experience on the HPB. However, because the risk and responsibility for the final design should be taken by designers solely, they are afraid of convenient black box decision making provided by machines. If the process of using the primary knowledge in which frame to reach the solution and how the solution is derived are transparently open to the designers, the solution made by the design expert system will be able to obtain more trust from designers. This transparent decision support process would comply with the requirement specified in a recent design study that designers prefer flexible design environments that give more creative control and freedom over design options, when compared to an automated optimization approach.

Highlights

  • Requirements and constraints that should be satisfied during the planning and designing of high-performance buildings (HPBs) have been increasing

  • Since a knowledge base should cover the scope of engineering problems and the range of relevant information within which the expert system can provide solutions, the corresponding raw data and information should be formulated to be affordable and in a tangible format so that the inference engine can access the portable knowledge

  • Including knowledge acquisition, knowledge base construction, and use cases of the deA comparatively fewer number of expert systems have been used in infrastructure industries, including the construction, transportation, and real estate industries [5]; some of early expert systems were applied to structural design [11]

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Summary

Introduction

Requirements and constraints that should be satisfied during the planning and designing of high-performance buildings (HPBs) have been increasing. Sustainability 2021, 13, 4640 load or whether it would increase the heating load depending on roof footprint and neighbor’s shade. Often, the initial design approved by the client in the earlier phases may not be valid in later phases, especially for long-term construction projects. With the increase in client expectations for HPBs and public preference for sustainability, various cutting-edge systems and integrated measures have been proposed. Even experienced HPB designers may have to research new systems, learn their uses, and analyze their suitability for the project at hand

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