2015
DOI: 10.14257/ijca.2015.8.7.25
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A Short-Term Prediction Model Based on Support Vector Regression Optimized by Artificial Fish-Swarm Algorithm

Abstract: In urban management, it is important to precisely forecast the short-term demand for necessary resources, including water, electric power, and gas. Although a variety of prediction models have been proposed in literature, the underlying defects and limitations confine the effectiveness and forecasting precision of these models. In this paper, the shortterm prediction problem is modeled as a non-linear multivariate regression problem, which is solved by support vector regression (SVR). The parameters in SVR are… Show more

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“…In addition, it can prevent and eliminate wind power ramp and other wind power events posing a significant threat to the power grid [1][2] With a statistical learning model, stroke power prediction is divided into point (deterministic) prediction and interval (uncertain) prediction. Currently, point prediction methods mainly include support vector machines and neural networks [3][4][5][6][7] . However, a deterministic prediction cannot quantitatively describe the uncertainty of wind power.…”
Section: Introductionmentioning
confidence: 99%
“…In addition, it can prevent and eliminate wind power ramp and other wind power events posing a significant threat to the power grid [1][2] With a statistical learning model, stroke power prediction is divided into point (deterministic) prediction and interval (uncertain) prediction. Currently, point prediction methods mainly include support vector machines and neural networks [3][4][5][6][7] . However, a deterministic prediction cannot quantitatively describe the uncertainty of wind power.…”
Section: Introductionmentioning
confidence: 99%