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Enhancing Survey Efficiency and Predictive Ability in Energy System Design through Machine Learning: A Workflow-Based Approach for Improved Outcomes
by
Chapman, Andrew
in
Algorithms
/ Artificial intelligence
/ Bias
/ Chapman, Andrew
/ Climate change
/ Energy efficiency
/ Energy industry
/ energy system
/ Environmental justice
/ Green technology
/ Literature reviews
/ Machine learning
/ Methods
/ Response rates
/ Stakeholders
/ survey analysis
/ Surveys
/ sustainability
/ system preference
/ Systems design
2023
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Enhancing Survey Efficiency and Predictive Ability in Energy System Design through Machine Learning: A Workflow-Based Approach for Improved Outcomes
by
Chapman, Andrew
in
Algorithms
/ Artificial intelligence
/ Bias
/ Chapman, Andrew
/ Climate change
/ Energy efficiency
/ Energy industry
/ energy system
/ Environmental justice
/ Green technology
/ Literature reviews
/ Machine learning
/ Methods
/ Response rates
/ Stakeholders
/ survey analysis
/ Surveys
/ sustainability
/ system preference
/ Systems design
2023
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Do you wish to request the book?
Enhancing Survey Efficiency and Predictive Ability in Energy System Design through Machine Learning: A Workflow-Based Approach for Improved Outcomes
by
Chapman, Andrew
in
Algorithms
/ Artificial intelligence
/ Bias
/ Chapman, Andrew
/ Climate change
/ Energy efficiency
/ Energy industry
/ energy system
/ Environmental justice
/ Green technology
/ Literature reviews
/ Machine learning
/ Methods
/ Response rates
/ Stakeholders
/ survey analysis
/ Surveys
/ sustainability
/ system preference
/ Systems design
2023
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Enhancing Survey Efficiency and Predictive Ability in Energy System Design through Machine Learning: A Workflow-Based Approach for Improved Outcomes
Journal Article
Enhancing Survey Efficiency and Predictive Ability in Energy System Design through Machine Learning: A Workflow-Based Approach for Improved Outcomes
2023
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Overview
The design of a desirable, sustainable energy system needs to consider a broad range of technologies, the market landscape, and the preferences of the population. In order to elicit these preferences, both toward lifestyle factors and energy system design, stakeholder engagement is critical. One popular method of stakeholder engagement is the deployment and subsequent analysis of a survey. However, significant time and resources are required to design, test, implement and analyze surveys. In the age of high data availability, it is likely that innovative approaches such as machine learning might be applied to datasets to elicit factors which underpin preferences toward energy systems and the energy mix. This research seeks to test this hypothesis, utilizing multiple algorithms and survey datasets to elicit common factors which are influential toward energy system preferences and energy system design factors. Our research has identified that machine learning models can predict response ranges based on preferences, knowledge levels, behaviors, and demographics toward energy system design in terms of technology deployment and important socio-economic factors. By applying these findings to future energy survey research design, it is anticipated that the burdens associated with survey design and implementation, as well as the burdens on respondents, can be significantly reduced.
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