This content is not included in
your SAE MOBILUS subscription, or you are not logged in.
A Prototype Simulation Based Optimization Approach to Model and Design an Advanced Life Support System
Technical Paper
2004-01-2576
ISSN: 0148-7191, e-ISSN: 2688-3627
Annotation ability available
Sector:
Language:
English
Abstract
In this paper a SIMulation based OPTimization (SIMOPT) approach is used to study the dynamics of Advanced Life Support System (ALSS). The SIMOPT architecture uses a Deterministic Optimization (DO) algorithm to optimize the overall ALS behavior by minimizing the re-supplies which are difficult to procure or transport, in conjunction with a simulation model which introduces uncertainty, i.e. randomness, to the system. DO algorithm is a detailed deterministic optimization model of ALSS, which is used to determine the values of strategic decisions, such as the crop growth area. An aggregate time-dependent mass balance model of ALSS and an aggregate steady state mass balance model of ALSS are developed as the simulation and optimization modules in SIMOPT, respectively. The ranges of acceptable values of strategic decisions, e. g. safety buffers for oxygen, edible food, water and carbon dioxide, in a given ALSS scenario are determined using SIMOPT which utilizes time series data mining methods.
Authors
- Selen Aydogan - School of Chemical Engineering, Purdue University
- Seza Orcun - School of Chemical Engineering, Purdue University
- Gary Blau - School of Chemical Engineering, Purdue University
- Joseph F. Pekny - School of Chemical Engineering, Purdue University
- Gintaras Reklaitis - School of Chemical Engineering, Purdue University
Citation
Aydogan, S., Orcun, S., Blau, G., Pekny, J. et al., "A Prototype Simulation Based Optimization Approach to Model and Design an Advanced Life Support System," SAE Technical Paper 2004-01-2576, 2004, https://doi.org/10.4271/2004-01-2576.Also In
References
- Drysdale, A. Thomas M. Fresa M. Wheeler R. M. “OCAM – A CELSS Modeling Tool: Description and Results” SAE Technical Paper Series, 921241 1992
- Drysdale, A. “Lunar Bioregenerative Life Support Modeling” SAE Technical Paper Series, 941456 1994
- Schneegurt, M. A. Sherman L. A. “CELSS-3D: A broad computer model simulating a controlled ecological life support system” Life Support Biosphere Sci. 4 3 20 1997
- Drysdale, A. “Computer Modeling for Advanced Life Support System Analysis” Life Support & Biosphere Science 4 21 29 1997
- Finn, C. K. “Dynamic System Modeling of Regenerative Life Support Systems” SAE Technical Paper Series, 1999-01-2040 1999
- Rodriguez, L. F. Kang, S. Ting K. C. “Top-level modeling of an ALS system utilizing object-oriented techniques” Advances in Space Research 31 1811 1822 2003
- Kortenkamp, D. Bell S. “Simulating Advanced Life Support System for Integrated Control Research’ SAE Technical Paper Series, 2003-01-2546 2003
- Pekny, J. F. “Algorithm architectures to support large-scale process systems engineering applications involving combinatorics, uncertainty, and risk management” Computers and Chemical Engineering 26 239 267 2002
- Subramanian, V. Pekny, J. F. Reklaitis G. V. “A Computational Framework for Studying Decentralized Supply Chain Dynamics” to be presented in: ESCAPE-14: European Symposium on Computer Aided Process Engineering Lisbon, Portugal May 16–19 2004
- Subramanian, D. Pekny, J. F. Reklaitis G.V. “A Simulation-Optimization Framework for Reseacrh and Development Pipeline Management” AIChE Journal 47 2226 2242 2001
- Aydogan, S. Orcun, S. Blau, G. Pekny, J. Applequist, G. Yih, Y. Chiu, G. Yao B. “Aggregate System Level Material Analysis for Advanced Life Support Systems” SAE Technical Paper Series, 2003-01-2362 2003
- Hanford, A. J. “BVAD: Advanced Life Support Baseline Values and Assumptions Document” 2002
- Keogh, E. J. Kasetty S. “On the Need for Time Series Data Mining Benchmarks: A Survey and Empirical Demonstration” Proceedings of the Eighth ACM SIGKDD International Conference on Knowledge Discovery and Data Mining Alberta ACM Press 102 111 2002
- Keogh, E. J. “Fast similarity search in the presence of longitudinal scaling in time series databases” Proceedings of the 9th International Conference on Tools with Artificial Intelligence Newport Beach IEEE Press 578 584 1997
- Keogh, E. J. Pazzani M. J. “An enhanced representation of time-series which allows fast and accurate classification, clustering and relevance feedback” Proceedings of the Fourth International Conference on Knowledge Discovery and Data Mining New York AAAI Press 239 243 1998