Towards model integration and model-based decision support for environmental applications

被引:0
|
作者
Struss, P. [1 ]
机构
[1] Tech Univ Munich, Dept Comp Sci, D-8046 Garching, Germany
来源
18TH WORLD IMACS CONGRESS AND MODSIM09 INTERNATIONAL CONGRESS ON MODELLING AND SIMULATION: INTERFACING MODELLING AND SIMULATION WITH MATHEMATICAL AND COMPUTATIONAL SCIENCES | 2009年
关键词
Decision Support System (DSS); model-based reasoning; automated modeling;
D O I
暂无
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
We argue that scientific results from different fields that can help decision making about environmental problems should be delivered in the form of executable and combinable models. For this purpose, such models have to be stated in a coherent modeling framework. For their integration, it is not essential (and even unnecessary) that they share a mathematical formalism. More fundamentally, they have to be stated at a conceptual level in order to identify and relate the objects and quantities that occur in the various model fragments. In order to be truly compositional, the models have to be formulated as independent model fragments that represent elementary processes, and they have to be stated in a context-independent way to enable their reuse for different purposes. Computer-based decision support should be based on such models and generic algorithms for drawing inferences from these models. The basic steps in such a model-based decision support system are situation assessment, which is the task of generating a model that is compliant with the observations provided. Based on such a situation assessment, the next step is therapy proposal, which amounts to generating a model that combines the model of the current situation and models of human interventions and is compliant with the goals to be achieved by the remedy. Figure 1 displays this basic architecture. These steps can be formalized as instances of model revision in logic and realized by consistency-based diagnosis techniques. As the modeling formalism, we propose what has been developed as process-oriented modeling in Artificial Intelligence. The elementary model fragments, called processes, contain an explicit representation of their preconditions, stated in conceptual terms by reference to objects, their existence, properties, and relations. Their effect part does not only relate quantities, but also create objects and relations. Such model fragments can be formalized as logical formulas of the form StructuralConditions QuantityConditions double right arrow StructuralEffects QuantityEffects. The logical foundation of this modeling formalism allows for the integration with the logic-based model revision algorithm. Since the effects of a process may imply (or negate) the preconditions of other proccesses, the composition of the model for a certain scenario based on a library of elementary processes can be performed by an automated reasoning process and is not dependent on modeling or domain experts. As a consequence, this approach promises multiple benefits, the major ones being support for the integration of models from different research fields and sources, re-use of model fragments in different contexts and for different purposes, availability of expert knowledge (captured by the model library) for non-experts.
引用
收藏
页码:2279 / 2285
页数:7
相关论文
共 50 条
  • [31] MODEL-BASED DECISION SUPPORT SYSTEMS - AN EFFECTIVE IMPLEMENTATION FRAMEWORK
    FLOYD, SA
    TURNER, CF
    DAVIS, KR
    COMPUTERS & OPERATIONS RESEARCH, 1989, 16 (05) : 481 - 491
  • [32] Model-Based Decision Support for Protected Cultivation of Sweet Pepper
    Kromdijk, J.
    Driever, S.
    Buwalda, F.
    de Vaate, J. Bij
    Zwinkels, J.
    IV INTERNATIONAL SYMPOSIUM ON MODELS FOR PLANT GROWTH, ENVIRONMENTAL CONTROL AND FARM MANAGEMENT IN PROTECTED CULTIVATION - HORTIMODEL2012, 2012, 957 : 247 - 252
  • [33] A Model-Based Decision Support Tool for Grey Mould Prediction
    Korner, O.
    Holst, N.
    de Visser, P.
    INTERNATIONAL SYMPOSIUM ON NEW TECHNOLOGIES FOR ENVIRONMENT CONTROL, ENERGY-SAVING AND CROP PRODUCTION IN GREENHOUSE AND PLANT FACTORY - GREENSYS 2013, 2014, 1037 : 569 - 574
  • [34] Model-based soybean decision support: A technology transfer project
    Welch, SM
    Jones, JW
    Reeder, G
    COMPUTERS IN AGRICULTURE, 1998, 1998, : 487 - 494
  • [35] Model-Based Diagnostic Decision-Support System for Satellites
    Feldman, Alexander
    de Castro, Helena Vicente
    van Gemund, Arjan
    Provan, Gregory
    2013 IEEE AEROSPACE CONFERENCE, 2013,
  • [36] Evolutionary algorithms for knowledge discovery and model-based decision support
    Jallas, E
    Sequeira, R
    Boggess, JE
    ARTIFICIAL INTELLIGENCE IN AGRICULTURE 1998, 1998, : 115 - 120
  • [37] Model-based decision support for knowledge-intensive processes
    Seidel, Anjo
    Haarmann, Stephan
    Weske, Mathias
    JOURNAL OF INTELLIGENT INFORMATION SYSTEMS, 2023, 61 (01) : 143 - 165
  • [38] A decision support environment for the high-throughput model-based screening and integration of biomass processing paths
    Tsakalova, Marinella
    Lin, Ta-Chen
    Yang, Aidong
    Kokossis, Antonis C.
    INDUSTRIAL CROPS AND PRODUCTS, 2015, 75 : 103 - 113
  • [39] Estimating the Cost and Benefit of Model-Based Testing: A Decision Support Procedure for the Application of Model-Based Testing in Industry
    Mohacsi, Stefan
    Felderer, Michael
    Beer, Armin
    PROCEEDINGS 41ST EUROMICRO CONFERENCE ON SOFTWARE ENGINEERING AND ADVANCED APPLICATIONS SEAA 2015, 2015, : 382 - 389
  • [40] Electrophysiological correlates reflect the integration of model-based and model-free decision information
    Ben Eppinger
    Maik Walter
    Shu-Chen Li
    Cognitive, Affective, & Behavioral Neuroscience, 2017, 17 : 406 - 421