In this paper, we aim to solve the resource-constrained multiproject scheduling problem (rc-mPSP), in which more than one project are scheduled simultaneously, projects share global resources, and the average project delay and total project time are minimized as objectives. In order to solve this problem by a centralized scheduling method, we present a new genetic algorithm (GA) approach. In this procedure, we follow the GA described in Okada et al . (2014) and improve its genetic operators, such as crossover and mutation, and local search so as to work better on rc-mPSP. Furthermore, in order to evaluate the proposed approach, we compare the results of the computational experiment on certain standard project instances with the several competing decentralized methods and centralized methods presented in the literature. We show that our procedure is one of the most competitive among such algorithms.
Abstracr -Support Vector Machine (SVM) is characteristic of processing complex data and high dimensional data. In this paper, a new approach of image decision-level fusion based on SVM and the corresponding fusion d e based on consensus theoretic were presented. Then to select a test area in Shaoxing City, Zhejiang Province, China, a fusion experiment was conducted using Landsat TM multispectral data (30m) and IRS-C Pan data (5.8m).Finally an evaluation on the fusion image was given. The results show that the overall classification accuracy of the fusion image reached 81.05%. The new fusion method could satisfy the requirement of land cover classification automatically.
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