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id caadria2022_286
authors Khean, Nariddh, During, Serjoscha, Chronis, Angelos, Konig, Reinhard and Haeusler, Matthias Hank
year 2022
title An Assessment of Tool Interoperability and its Effect on Technological Uptake for Urban Microclimate Prediction with Deep Learning Models
doi https://doi.org/10.52842/conf.caadria.2022.1.273
source Jeroen van Ameijde, Nicole Gardner, Kyung Hoon Hyun, Dan Luo, Urvi Sheth (eds.), POST-CARBON - Proceedings of the 27th CAADRIA Conference, Sydney, 9-15 April 2022, pp. 273-282
summary The benefits of deep learning (DL) models often overshadow the high costs associated with training them. Especially when the intention of the resultant model is a more climate resilient built environment, overlooking these costs are borderline hypocritical. However, the DL models that model natural phenomena‚conventionally simulated through predictable mathematical modelling‚don't succumb to the costly pitfalls of retraining when a model's predictions diverge from reality over time. Thus, the focus of this research will be on the application of DL models in urban microclimate simulations based on computational fluid dynamics. When applied, predicting wind factors through DL, rather than arduously simulating, can offer orders of magnitude of improved computational speed and costs. However, despite the plethora of research conducted on the training of such models, there is comparatively little work done on deploying them. This research posits: to truly use DL for climate resilience, it is not enough to simply train models, but also to deploy them in an environment conducive of rapid uptake with minimal barrier to entry. Thus, this research develops a Grasshopper plugin that offers planners and architects the benefits gained from DL. The outcomes of this research will be a tangible tool that practitioners can immediately use, toward making effectual change.
keywords Deep Learning, Technological Adoption, Fluid Dynamics, Urban Microclimate Simulation, Grasshopper, SDG 11
series CAADRIA
email
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100%; open Agrawal, A. (2018) Find in CUMINCAD Prediction Machines: The Simple Economics of Artificial Intelligence , Boston, Massachusetts: Harvard Business Review Press. ISBN: 978-1-6336-9567-2

100%; open Angwin, J., Larson, J., Mattu, S. & Kirchner, L. (2016) Find in CUMINCAD Machine Bias , Propublica. Retrieved November 27, 2021, from https://www.propublica.org/article/machine-bias-risk-assessments-in-criminal-sentencing

100%; open Baesens, B. (2014) Find in CUMINCAD Analytics in a Big Data World: The Essential Guide to Data Science and its Applications , Hoboken, New Jersey: Wiley. ISBN: 978-1-1188-9270-1

100%; open Broussard, M. (2019) Find in CUMINCAD Artificial Unintelligence: How Computers Misunderstand the World , Cambridge, Massachusetts: The MIT Press. ISBN: 978-0-2620-3800-3

100%; open Browne, J. (2019) Find in CUMINCAD Think, Make, Imagine: A Brief History of the Future , London: Bloomsbury Publishing. ISBN: 978-1-5266-0572-6

100%; open Calzolari, G. & Lui, W. (2021) Find in CUMINCAD Deep learning to replace, improve, or aid CFD analysis in build environment applications: A review , Building and Environment, 206, 108315. https://doi.org/10.1016/j.buildenv.2021.108315

100%; open Chronis, A., Aichinger, A., Duering, S., Galanos, T., Fink, T., Vesely, O. & Koenig, R. (2020) Find in CUMINCAD InFraReD: An Intelligence Framework for Resilient Design , 25th International Conference on Computer-Aided Architectural Design Research Asia. TheAssociation for Computer-Aided Architectural Design Research Asia (CAADRIA)

100%; open Ding, C. & Lam, K. P. (2019) Find in CUMINCAD Data-driven model for cross ventilation potential in high-density cities based on coupled CFD simulation and machine learning , Building and Environment, 165, 106394. https://doi.org/10.1016/j.buildenv.2019.106394

100%; open Domingos, P. (2015) Find in CUMINCAD The Master Algorithm: How the Quest for the Ultimate Learning Machine Will Remake Our World , New York: Basic Books. ISBN: 978-0-4650-6570-7

100%; open Erdemir, G., Zengin, A. T. & Akinci, T. C. (2020) Find in CUMINCAD Short-term wind speed forecasting system using deep learning for wind turbine applications , International Journal of Electrical and Computer Engineering, 10(6). https://doi.org/10.11591/ijece.v10i6.pp5779-5784

100%; open Grekousis, G. (2019) Find in CUMINCAD Artificial neural networks and deep learning in urban geography: A systematic review and meta-analysis , Computers, Environment and Urban Systems, 74, 244-256. https://doi.org/10.1016/j.compenvurbsys.2018.10.008

100%; open Hafiz, A. M. & Bhat, G. M. (2020) Find in CUMINCAD A survey of deep learning techniques for medical diagnosis , Information and communication technology for sustainable development, 161-170. https://doi.org/10.1007/978-981-13-7166-0_16

100%; open Hopkins, D. (2008) Find in CUMINCAD A teacher's guide to classroom research , Maidenhead: Open University Press. ISBN: 978-0-3352-2175-2

100%; open Kamilaris, A. & Prenafeta-Boldu, F. X. (2018) Find in CUMINCAD Deep learning in agriculture , Computers and Electronics in Agriculture, 147, 70-90. https://doi.org/10.1016/j.compag.2018.02.016

100%; open Kaseb, Z., Hafezi, M., Tahbaz, M. & Defani, S. (2020) Find in CUMINCAD A framework for pedestrian-level wind conditions improvement in urban areas: CFD simulation and optimization , Building and Environment, 184, 107191. https://doi.org/10.1016/j.buildenv.2020.107191

100%; open Kemmis, S. (1988) Find in CUMINCAD The Action research planner , Waurn Ponds, Victoria: Deakin University Press. ISBN: 978-0-7300-0521-6

100%; open Kulkarni, P. A., Dhoble, A. S. & Padole, P. M. (2019) Find in CUMINCAD Deep neural network-based wind speed forecasting and fatigue analysis of a large composite wind turbine blade , Journal of Mechanical Engineering Science, 233(8), 2794-2812. https://doi.org/10.1177/0954406218797972

100%; open McAfee, A. (2017) Find in CUMINCAD Machine, Platform, Crowd: Harnessing our Digital Future , New York: W.W. Norton & Company. ISBN: 978-0-3932-5429-7

100%; open Mokhtar, S., Beveridge, M., Cao, Y. & Drori, I. (2021) Find in CUMINCAD Pedestrian Wind Factor Estimation in Complex Urban Environments , 13th Asian Conference on Machine Learning

100%; open Sowell, T. (2007) Find in CUMINCAD A conflict of visions: ideological origins of political struggles , New York: Basic Books. ISBN: 978-0-4650-0205-4

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