Development of Optimization Algorithms for the Solution of .ppt
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1、Development of Optimization Algorithms for the Solution of Problems involving Computationally Expensive Analysis,Kalyan Shankar Bhattacharjee Supervisor: Tapabrata Ray Co-supervisor: Hemant Kumar Singh,Presentation overview,What class of problems do they represent and why is it important to solve th
2、em ? Existing approaches and their limitations Approaches proposed in this research Preliminary results Future Direction Timeline and deliverables,What is the problem ?,Optimization problems in which the objectives and/or constraints are evaluated using computationally expensive simulations, define
3、the general scope of such problems. Examples include multidisciplinary design, models of complex natural systems or processes where the underlying analysis involves iterative solvers (finite element analysis, computational fluid dynamics, computational electro-magnetics, weather models, bushfire mod
4、els etc. Objective functions and constraints are highly nonlinear often with function and slope discontinuity. Solvers are often in black box form. Large number of variables. Evaluation of a single solution is computationally expensive, several CPU hours.To deal with such classes of problems, popula
5、tion based stochastic algorithms are typically used often with the aid of approximations.,Existing approaches,Several approaches have been proposed so far to deal with such classes of problems: Use of clusters, parallel computing infrastructure, GPs etc. Available to a small group of industries or e
6、lite research institutes. Is not within the scope of this research. Use of surrogates or computationally cheaper approximation models in lieu of computationally expensive analysis during the course of optimization. Well established area of Surrogate Assisted Optimization. Not considered within this
7、scope of research directly. Identification of promising solutions and evaluating only them to reduce computational cost. Rarely investigated in the field. Selective evaluation of constraints and objectives of these promising solutions can lead to further savings. Use of multi-fidelity optimization s
8、trategies. Fewer reports and less investigated in the field.,Existing approaches: Selective evaluation,Identification of promising solutions based on SVM has been suggested for MO problems. No reports on whether evaluation of one is sufficient ? Which one ? And can one always evaluate just one ? Par
9、tial evaluation has never been studied. There are no reports on classifier guided constraint selection.Can we design means to identify promising solutions and only evaluate relevant objectives and constraints of them during the course of search ?,Limitations: Selective evaluation,Existing approaches
10、: Multi-fidelity optimization,Using correction/scaling/bridging MFO: misguided search, self adaptive correction functions. Non-linearity handling in RSM. Knowledge based (e.g. KBNN) algorithms: dependent on many parameters, proper network architecture identification, extrapolation beyond the limit o
11、f dataset is impossible. Trust region model and space mapping: constraint handling is not implemented, significant overhead calculations at each iteration for model update, 1st order consistency with the Lagrangian at the centre of trust region. Gradient based models: misguidance by low fidelity est
12、imates, expensive to build metamodel at each iteration especially when number of data points are high. Switching fidelity models: involve many parameters, switching mechanism activates when there is no improvement based on low fidelity estimates, misguided search. Lack of efficient constraint handli
13、ng mechanism in multi-fidelity optimization. Multi/many-objective constrained/unconstrained multi-fidelity problem solving is not studied so far. Rank based learning model to identify worth of a solution and selective fidelity evaluations of potential solutions are still not well visited areas. Benc
14、hmark test suite of multi-fidelity optimization does not exist.,Limitations: Multi-fidelity optimization,Research objectives,Development of classifier guided selective evaluation strategies i.e. ones where promising solutions are identified and/or selected set of objectives and constraints are evalu
15、ated.Development of practical and computationally efficient optimization algorithms to solve multi/many-objective constrained/unconstrained MFO problems.Development of a test suite for MFO (single/multi/many-objective, constrained/unconstrained, scalable, tunable problems).,Proposed approach: Select
16、ive evaluation of solutions and constraints,1. Selective evaluation of solutions and constraints (constrained single objective problems):,1 Suykens, J. A. K. and Van Gestel, T. and De Brabanter, J. and De Moor, B. and Vandewalle, J., Least squares support vector machines. World Scientific, 2002, vol
17、. 4. 2 Chapelle, O. and Keerthi, S. S., “Efficient algorithms for ranking with SVMs,” Information Retrieval, vol. 13, no. 3, pp. 201215, 2010.,2. Selective evaluation of objectives (Unconstrained bi-objective problems):,Proposed approach: Selective evaluation of objectives,Preliminary results: Selec
18、tive evaluation of constraints,Problem Definition (G5) 1 Number of variables (x)= 4 Number of constraints (g)= 4 Number of objective (f) =1 Best know Optimum at X = 679.9453, 1026.067, 0.1188764, 0.3962336, f = 5126.4981 (Sum of CV = 1e-4),fitness evaluation = 348,000 2 Feasibility ratio () = 0.0000
19、%,Findings (within 1000 fitness evaluation): Performance of CGCSM is best in terms of convergence rate of mean objective function value with evaluation cost. IDEA and NSGA-II performance is the same. SRES performs worst in all aspects.,Mean sum CV convergence plot (G5),1 Koziel, S., & Michalewicz, Z
20、. (1999). Evolutionary algorithms, homomorphous mappings, and constrained parameter optimization. Evolutionary computation, 7(1), 19-44. 2 Mezura-Montes, E., Coello, C. A. C., & Tun-Morales, E. I. (2004). Simple feasibility rules and differential evolution for constrained optimization. In MICAI 2004
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