Multi-objective Evolutionary Algorithm Supported Construction of Architectural Window Design Model Based on Visual Comfort - A Case Study of Office Buildings in Cold Regions
This work is licensed under the Creative Commons Attribution 4.0 International License.
Fu, X., & Sun, J. (2017). A new learning based dynamic multi-objective optimization evolutionary algorithm. In 2017 IEEE Congress on Evolutionary Computation, CEC 2017 - Proceedings.Search in Google Scholar
Celadyn, M. (2020). Integrative Design Classes for Environmental Sustainability of Interior Architectural Design. Sustainability, 12.Search in Google Scholar
Bakar, A. M. R., Abbas, et al. (2017). Solution for Multi-Objective Optimization Master Production Scheduling Problems Based on Swarm Intelligence Algorithms. Journal of Computational and Theoretical Nanoscience.Search in Google Scholar
Xie, Q., Wang, et al. (2017). Multi-objective evolutionary algorithm based on decision space partition and its application in hybrid power system optimization. Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies, 46(4), 827-844.Search in Google Scholar
Wonoto, N. (2017). Integrating Parametric Structural Analysis and Optimization in the Architectural Schematic Design Phase [Doctoral dissertation, Clemson University].Search in Google Scholar
George, A., Poguluri, S. K., Kim, J., & Cho, I. H. (2022). Design optimization of a multi-layer porous wave absorber using an artificial neural network model. Ocean Engineering.Search in Google Scholar
Sarah, N., Christina, B., & Daryl, M. (2018). ‘Essentially it’s just a lot of bedrooms’: architectural design, prescribed personalization and the construction of care homes for later life. Sociology of Health & Illness.Search in Google Scholar
Liang, H., & Huang, J. (2021). Research on the Architectural Design Positioning of University Halls. 005(006):P.25-32.Search in Google Scholar
Zhang, J., Yao, Y., Sun, W., et al. (2022). Application of the Non-dominated Sorting Genetic Algorithm II in Multi-objective Optimization of Orally Disintegrating Tablet Formulation. AAPS PharmSciTech, 23(6), 1-7.Search in Google Scholar
Park, W. Y., Tangpong, C., Ro, Y. K., et al. (2022). The design sourcing choice and technological performance in the upscale and downscale markets of an architectural innovation. Journal of Operations Management.Search in Google Scholar
Fu, L., Huang, Z., Kilbinger, M., et al. (2010). The Application of the Multi-Dimensional Clustering Algorithm in the Field of Abell 383. In Galaxy Evolution: Infrared to Millimeter Wavelength Perspective.Search in Google Scholar
Kong, S., Yeap, et al. (2018). Constructing a Mixed Methods Research Design: Exploration of an Architectural Intervention. Journal of Mixed Methods Research.Search in Google Scholar
Luo, F. E., Peng, J. H., & Jian-Qiang, H. U. (2009). Application of data mining in the field of agriculture. Agriculture Network Information.Search in Google Scholar
Feng, Y., Feng, L., Kwong, S., et al. (2022). A Multivariation Multifactorial Evolutionary Algorithm for Large-Scale Multiobjective Optimization. IEEE Transactions on Evolutionary Computation: A Publication of the IEEE Neural Networks Council, 26(2), 26.Search in Google Scholar
Whitcomb, J. (2005). Achieve the watercolor look using Photoshop. Creative Designer, 2005(5), 2.Search in Google Scholar
Guo, Y., Liu, Z., Tan, J., et al. (2022). LPFS: Learnable Polarizing Feature Selection for Click-Through Rate Prediction.Search in Google Scholar
Liu, H., Pan, J., & Marxism, S. O. (2018). A Dilemma of Green Development in Northwest China and Its Countermeasures. Shanghai Environmental Sciences.Search in Google Scholar
Yue, C., Dang, Y., Gu, S., et al. (2022). Optimization of undifferenced and uncombined PPP stochastic model based on covariance component estimation. GPS Solutions, 26(4).Search in Google Scholar
Anandhi, J. S., & Joseyphus, R. J. (2022). Subsurface thermal sensitivity evaluation of magnetic nanoparticles for theranostics using infrared thermography.Search in Google Scholar
Jwo, D. J., & Hsieh, M. H. (2021). GPS Vector Tracking Loop with Fault Detection and Exclusion.Search in Google Scholar
Erdal, Y., Aye, E. E. E., & Dilek, N. M. (2022). Evaluation of Citrus reticulata essential oil: Chemical composition and antibacterial effectiveness incorporated gelatin on E. coli and S. aureus. International Journal of Environmental Health Research.Search in Google Scholar
Bouquot, T. (2022). Architects Embrace a New Paradigm About Metal Building Design. Metal Architecture.Search in Google Scholar
Alsaadani, S., & Souza, C. (2019). Teaching BPS to architects: A closer look at the building performance simulation ‘consumer’ and ‘performer’ training paradigms. IOP Conference Series: Earth and Environmental Science, 397(1), 012004 (10pp).Search in Google Scholar
Jun, L. U., Zheng, G. S., Jin-Feng, M. A., et al. (2014). Optimization design and analysis of the SCARA robot. Journal of Shaanxi University of Science & Technology (Natural Science Edition).Search in Google Scholar
Eriksson, A. B. (2016). Residential usability and social sustainability, Towards a paradigm shift within housing design?Search in Google Scholar
Qing, M. A. (2016). Multi-objective Evolutionary Algorithm Based Weight Vectors Generation Method of MOEA/D. Computer Science.Search in Google Scholar
Claps, R. J. (2010). Time-resolved spectroscopy system and methods for multiple-species analysis in fluorescence and cavity-ringdown applications.Search in Google Scholar
Wu, G., & Zhao, G. (2022). Parameter influence law analysis and optimal design of a dual mass flywheel. 2(2):13.Search in Google Scholar
Wang, W., Li, K., Jalil, H., et al. (Neural Computing and Applications, 1-19). An improved estimation of distribution algorithm for multi-objective optimization problems with mixed-variable.Search in Google Scholar
Zhu, D., Hu, F., & Peng, X. (2018). Expansion Design of Interferometric Aperture Synthesis Arrays Based on Multi-Objective Optimization. IEEE Access.Search in Google Scholar
Pan, J. S., Liu, N., & Chu, S. C. (2022). A competitive mechanism based multi-objective differential evolution algorithm and its application in feature selection. Knowledge-Based Systems, 245, 108582.Search in Google Scholar