ASHRAE OR-16-C051-2016 A Visual Analytics Based Methodology for Multi-Criteria Evaluation of Building Design Alternatives.pdf
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1、Ranojoy Dutta is a High Performance Building Specialist with View Inc. Milpitas, CA. T. Agami Reddy is SRP professor at the Design School and the School of Sustainable Engineering in the Built Environment and George Runger is professor at the School of Computing Informatics and Decision Systems, Ari
2、zona State University, Tempe, AZ. A Visual Analytics Based Methodology for Multi-Criteria Evaluation of Building Design Alternatives Ranojoy Dutta T. Agami Reddy, PhD, PE George Runger PhD Associate Member ASHRAE Fellow ASHRAE ABSTRACT The objective of this paper is to illustrate a novel visualizati
3、on methodology which can enhance the complementary relationship between computers and designers of high performance buildings. The proposed approach facilitates Multi-Criterion Decision Making via interactive visualization that allows dynamic adjustment of important variables, while providing a visu
4、al range of allowable variation for the other design parameters. The parallel coordinates visualization technique is the culmination of a methodology which includes the application of Monte Carlo techniques to create a database of solutions using whole building energy simulations, along with data mi
5、ning methods to rank variable importance and reduce the multi-dimensionality of the design problem. The solution set are then fit by a second order regression model which can instantaneously provide bounds on specific regressor variables when other variables values are changed , while satisfying pre
6、-set energy performance limits. The methodology is illustrated using the USDOE medium office building configuration with 15 design variables. INTRODUCTION Designing buildings to be energy efficient can be described as a multi-criteria constrained optimization problem whose complexity originates from
7、 the large number of variables involved, the dynamic nature of building loads and processes, the intricacy of interaction effects among variables, and the inability of the designer to visualize cause and effect in multi-dimensional space. In multi-criteria optimization problems, the search for a sin
8、gle optimal solution is often futile, since the objectives are usually competitive. Instead, a feasible intermediary solution(s) may be found through an interactive search procedure involving both designer and computer. A strategy suited to this type of search has been demonstrated by Addison (1988)
9、 based on the idea of satisficing (satisfy + suffice) - a term coined by H.A. Simon in the context of economic theory. Simon suggests that, in general, individuals look for alternatives which are “good enough” rather than optimal. An alternative is “good enough” if it satisfies the individuals aspir
10、ation levels and suffices in the absence of a practical obtainable optimum. In the context of building design, these aspiration levels may alternately be considered to be performance thresholds (Addison 1988). Choosing from the wide variety of innovative technologies and energy efficiency measures a
11、vailable today, a designer has to balance environmental, energy and financial factors in order to reach the best possible solution that will maximize the energy efficiency of a building while satisfying the final user/owner needs (Diakaki et al. 2008). Thus, the need to address multi-criteria requir
12、ements makes it more valuable for a designer to know the “latitude” or “degree of freedom” he/she has in varying certain design variables while achieving satisfactory levels of energy performance as well as addressing other relevant criteria like life cycle cost, environmental impacts, etc. What is
13、required is a methodology that will allow designers to explore the consequences of decisions relating to varying these variables at the conceptual stage of design, and thereby design a building that achieves a good balance between multiple objectives (DCruz and Radford 1987). BACKGROUND While perfor
14、mance prediction can be highly automated through the use of computers, performance evaluation is usually not amenable, unless it is with respect to a single criterion. Multicriteria decision-making is the critical non-delegable design task that requires human intervention. Computers can, however, fa
15、cilitate the evaluation process though appropriate user interfaces that provide graphical representation of results and allow for direct comparison of multiple solutions with respect to multiple performance criteria. Thus, the design of high performance (low energy) buildings requires a synergy betw
16、een automated performance prediction/visualization with the human capabilities to perceive, relate and ultimately select a satisficing solution. Such a comprehensive design framework has been discussed by Dutta (2013), who addresses the need for a complementary relationship between human designers a
17、nd computers for Multi-Criteria Decision Making (MCDM) in the domain of low energy building design. The MCDM process has two elements (Thomas and Cook 2006): (a) A procedure to allow searching for one or more solutions that reflect the desired pay-off between the criteria. (b) A decision-making step
18、 wherein the designer selects the most desirable solution among feasible solutions. Dutta (2013) has implemented the MCDM search element using data mining techniques while the MCDM decision making component has been supported through interactive visualization. The complete MCDM process has been inco
19、rporated into a new methodology for high performance building design referred to as a Visual Analytics based Decision Support Methodology (VADSM). This paper discusses the decision making component of MCDM via Visual Analytics, which is defined as the science of analytical reasoning facilitated by i
20、nteractive visual interfaces (Thomas and Cook 2006). Historically, visual analytics evolved out of the fields of information and scientific visualization. However, visual analytics is more than just information visualization, and by definition it is an integrated approach combining visualization, hu
21、man factors and data analysis (Keim and Andrienko 2008). REVIEW OF EXISTING WORK In the domain of building energy analysis there is an increasing interest in the use of machine learning techniques such as neural networks, support vector machines and Random Forest (RF) for prediction of building ener
22、gy consumption (Zhao and Magoules 2012). State of the art nonlinear and nonparametric machine learning techniques such as RF do not require any prior knowledge of variable distribution or structure of the feature space, and inherently overcome assumptions of linear correlations and normality which a
23、re known to be ill-suited for many complicated applications. Tsanas and Xifara (2012) used RF to study the effect of eight input variables of residential buildings. They compared the RF to a classical linear regression technique (Iteratively Reweighted Least Squares IRLS) and found that RF greatly o
24、utperformed IRLS in finding an accurate functional relationship between the input and output variables. Classical regression settings may also fail to account for the presence of multi-collinearity, wherein variables appear to have large magnitude but opposite sign regression coefficients. On the co
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