共查询到6条相似文献,搜索用时 15 毫秒
1.
A simulation-based fuzzy chance-constrained programming model for optimal groundwater remediation under uncertainty 总被引:3,自引:0,他引:3
In this study a simulation-based fuzzy chance-constrained programming (SFCCP) model is developed based on possibility theory. The model is solved through an indirect search approach which integrates fuzzy simulation, artificial neural network and simulated annealing techniques. This approach has the advantages of: (1) handling simulation and optimization problems under uncertainty associated with fuzzy parameters, (2) providing additional information (i.e. possibility of constraint satisfaction) indicating that how likely one can believe the decision results, (3) alleviating computational burdens in the optimization process, and (4) reducing the chances of being trapped in local optima. The model is applied to a petroleum-contaminated aquifer located in western Canada for supporting the optimal design of groundwater remediation systems. The model solutions provide optimal groundwater pumping rates for the 3, 5 and 10 years of pumping schemes. It is observed that the uncertainty significantly affects the remediation strategies. To mitigate such impacts, additional cost is required either for increased pumping rate or for reinforced site characterization. 相似文献
2.
H. W. Lu G. H. Huang L. He 《Stochastic Environmental Research and Risk Assessment (SERRA)》2009,23(6):759-768
Rapid population growth and economy development have led to increasing reliance on water resources. It is even aggravated
for agricultural irrigation systems where more water is necessary to support the increasing population. In this study, an
inexact programming method based on two-stage stochastic programming and interval-parameter programming is developed to obtain
optimal water-allocation strategies for agricultural irrigation systems. It is capable of handling such problems where two-stage
decisions need to be suggested under random- and interval-parameter inputs. An interactive solving procedure derived from
conventional interval-parameter programming makes it possible for the impact of lower and upper bounds of interval inputs
to be well reflected in the resulting solutions. An agricultural irrigation management problem is then provided to demonstrate
the applicability, and reasonable solutions are obtained. Compared to the solutions from a representative interval-parameter
programming model where only one decision-stage exists, the interval of optimized objective-function value is narrow, indicating
more alternatives could be provided when water-allocation targets are rather high. However, chances of obtaining more benefits
exist in association with a risk of paying more penalties; such a relationship becomes apparent when the variation of water
availability is much intensive. 相似文献
3.
P. Guo G. H. Huang 《Stochastic Environmental Research and Risk Assessment (SERRA)》2009,23(3):349-359
In this study, a two-stage fuzzy chance-constrained programming (TFCCP) approach is developed for water resources management
under dual uncertainties. The concept of distribution with fuzzy probability (DFP) is presented as an extended form for expressing
uncertainties. It is expressed as dual uncertainties with both stochastic and fuzzy characteristics. As an improvement upon
the conventional inexact linear programming for handling uncertainties in the objective function and constraints, TFCCP has
advantages in uncertainty reflection and policy analysis, especially when the input parameters are provided as fuzzy sets,
probability distributions and DFPs. TFCCP integrates the two-stage stochastic programming (TSP) and fuzzy chance-constrained
programming within a general optimization framework. TFCCP incorporates the pre-regulated water resources management policies
directly into its optimization process to analyze various policy scenarios; each scenario has different economic penalty when
the promised amounts are not delivered. TFCCP is applied to a water resources management system with three users. Solutions
from TFCCP provide desired water allocation patterns, which maximize both the system’s benefits and feasibility. The results
indicate that reasonable solutions were generated for objective function values and decision variables, thus a number of decision
alternatives can be generated under different levels of stream flows, α-cut levels and fuzzy dominance indices. 相似文献
4.
A grey fuzzy optimization model is developed for water quality management of river system to address uncertainty involved in fixing the membership functions for different goals of Pollution Control Agency (PCA) and dischargers. The present model, Grey Fuzzy Waste Load Allocation Model (GFWLAM), has the capability to incorporate the conflicting goals of PCA and dischargers in a deterministic framework. The imprecision associated with specifying the water quality criteria and fractional removal levels are modeled in a fuzzy mathematical framework. To address the imprecision in fixing the lower and upper bounds of membership functions, the membership functions themselves are treated as fuzzy in the model and the membership parameters are expressed as interval grey numbers, a closed and bounded interval with known lower and upper bounds but unknown distribution information. The model provides flexibility for PCA and dischargers to specify their aspirations independently, as the membership parameters for different membership functions, specified for different imprecise goals are interval grey numbers in place of a deterministic real number. In the final solution optimal fractional removal levels of the pollutants are obtained in the form of interval grey numbers. This enhances the flexibility and applicability in decision-making, as the decision-maker gets a range of optimal solutions for fixing the final decision scheme considering technical and economic feasibility of the pollutant treatment levels. Application of the GFWLAM is illustrated with case study of the Tunga–Bhadra river system in India. 相似文献
5.
ISMISIP: an inexact stochastic mixed integer linear semi-infinite programming approach for solid waste management and planning under uncertainty 总被引:1,自引:1,他引:1
P. Guo G. H. Huang L. He 《Stochastic Environmental Research and Risk Assessment (SERRA)》2008,22(6):759-775
An inexact stochastic mixed integer linear semi-infinite programming (ISMISIP) model is developed for municipal solid waste
(MSW) management under uncertainty. By incorporating stochastic programming (SP), integer programming and interval semi-infinite
programming (ISIP) within a general waste management problem, the model can simultaneously handle programming problems with
coefficients expressed as probability distribution functions, intervals and functional intervals. Compared with those inexact
programming models without introducing functional interval coefficients, the ISMISIP model has the following advantages that:
(1) since parameters are represented as functional intervals, the parameter’s dynamic feature (i.e., the constraint should
be satisfied under all possible levels within its range) can be reflected, and (2) it is applicable to practical problems
as the solution method does not generate more complicated intermediate models (He and Huang, Technical Report, 2004; He et al. J Air Waste Manage Assoc, 2007). Moreover, the ISMISIP model is proposed upon the previous inexact mixed integer linear semi-infinite programming (IMISIP)
model by assuming capacities of the landfill, WTE and composting facilities to be stochastic. Thus it has the improved capabilities
in (1) identifying schemes regarding to the waste allocation and facility expansions with a minimized system cost and (2)
addressing tradeoffs among environmental, economic and system reliability level. 相似文献
6.
An interval-parameter multi-stage stochastic programming model for water resources management under uncertainty 总被引:1,自引:0,他引:1
In this study, an interval-parameter multi-stage stochastic linear programming (IMSLP) method has been developed for water resources decision making under uncertainty. The IMSLP is a hybrid methodology of inexact optimization and multi-stage stochastic programming. It has three major advantages in comparison to the other optimization techniques. Firstly, it extends upon the existing multi-stage stochastic programming method by allowing uncertainties expressed as probability density functions and discrete intervals to be effectively incorporated within the optimization framework. Secondly, penalties are exercised with recourse against any infeasibility, which permits in-depth analyses of various policy scenarios that are associated with different levels of economic consequences when the promised water-allocation targets are violated. Thirdly, it cannot only handle uncertainties through constructing a set of scenarios that is representative for the universe of possible outcomes, but also reflect dynamic features of the system conditions through transactions at discrete points in time over the planning horizon. The developed IMSLP method is applied to a hypothetical case study of water resources management. The results are helpful for water resources managers in not only making decisions of water allocation but also gaining insight into the tradeoffs between environmental and economic objectives. 相似文献