A Modifiable Architectural Design for Commercial Greenhouses Energy
Economic Dispatch Testbed
- URL: http://arxiv.org/abs/2401.03888v1
- Date: Mon, 8 Jan 2024 13:36:31 GMT
- Title: A Modifiable Architectural Design for Commercial Greenhouses Energy
Economic Dispatch Testbed
- Authors: Christian Skafte Beck Clausen, Bo N{\o}rregaard J{\o}rgensen, Zheng
Grace Ma
- Abstract summary: Commercial greenhouses strive to minimize energy costs while addressing CO2 emissions.
This paper proposes an architectural design for an energy economic dispatch testbed for commercial greenhouses.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Facing economic challenges due to the diverse objectives of businesses, and
consumers, commercial greenhouses strive to minimize energy costs while
addressing CO2 emissions. This scenario is intensified by rising energy costs
and the global imperative to curtail CO2 emissions. To address these dynamic
economic challenges, this paper proposes an architectural design for an energy
economic dispatch testbed for commercial greenhouses. Utilizing the
Attribute-Driven De-sign method, core architectural components of a
software-in-the-loop testbed are proposed which emphasizes modularity and
careful consideration of the multi-objective optimization problem. This
approach extends prior research by implementing a modular multi-objective
optimization framework in Java. The results demonstrate the successful
integration of the CO2 reduction objective within the modular architecture with
minimal effort. The multi-objective optimization output can also be employed to
examine cost and CO2 objectives, ultimately serving as a valuable
decision-support tool. The novel testbed architecture and a modular approach
can tackle the multi-objective optimization problem and enable commercial
greenhouses to navigate the intricate landscape of energy cost and CO2
emissions management.
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