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題名 | 都市鄰里公園之區位選擇研究=A Study of the Location Selection for Urban Neighborhood Park |
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作者 | 衛萬明; 林宏晉; | 書刊名 | 地理學報 |
卷期 | 45 民95.09 |
頁次 | 頁51-71 |
分類號 | 435.73 |
關鍵詞 | 區位理論; 不確定性因素; 基因演算法; 蒙地卡羅模擬法; 模擬最佳化; Location theory; Uncertainty factors; Genetic algorithm; Monte Carlo simulation; Simulation optimization; |
語文 | 中文(Chinese) |
中文摘要 | 本文主要乃針對有關區位選擇的問題中,人口預測的不確定性因素對於公園設施區位選擇的影響做一探討及研究。過去在求解設施最佳問題時,常常色問題單純化或是將區位選擇問題中所隱藏的不確定性因素以事牨定義好的值(predefined value)來設定之,如此一帝問題則變得單純且容易解決矣。然而其缺點卻是無法有效反映現實狀況,並使得設施區位設定的決策產生相當之誤差。臺灣都市目題已朝向多苀化發展,傳統的區位選擇方式已無法解決含有具不確定性因素的區位問題,因此,實有必要發展出一套可以針對區位選擇中具有不確定性因素進行風險評估的區位選擇模式,以提供最新具符合本文所探討的不確定性因素下公園設施最佳區位選擇之模式。 本研究將針對相關位理論、基因演算法(Genetic algorithms, GA)、蒙地卡羅模擬法(Monte Carlo Simulation)、及模擬最佳化(Simulation Optimization)法進行研究方法的探討,同時並將應用迴歸模式(regression model)以推估在區位模擬法進行其預測上之風險評估。本研究並結合區位理論中P-中位數法的概念,建構出一個在不確定性因素下公園設施最佳區位選擇的基本模式。在本研究中,採用RISK Optimizer最佳化軟體以進行模擬最佳化法並可有效的縮短搜尋可行解的時間,並進一步求解出公園設施的最佳區位之選擇。 本研究最後以臺中市西區之鄰里公園區位選擇來進行實證研究,並依據各鄰里的未來人口推估數量以解出公園說施興建之最佳區位位置。由於此種求解模式和步驟考量區位選擇中 具有不確定性的影響因素,因此其所求解出來的結果也將更能符合現實現境需求的情況。 |
英文摘要 | This paper proposes a model for use in selecting the location for a park facility where an uncertainty population is taken as a factor. In other existing models, the uncertainty population factor is simplified by using a fixed value or a value based on existing but inaccurate data. These methods oversimplify the issue and do not reflect actual circumstances, thereby causing inaccurate decisions. The proposed model seeks to rectify this problem. Taiwan has already reached a certain level of development that the old models are no longer appropriate. The proposed model seeks to complement the current situation while taking into consideration the uncertainty population factor. In the research conducted for the creation of the proposed model, detailed reviews of existing location theories, Genetic Algorithm, Monte Carlo simulation and Simulation Optimization have been made. A regression model is used to make a projection on the uncertainty population and to consider the uncertainty distance of travel. The Monte Carlo simulation is used for risk estimation. This sturdy then integrates P-median concept of location theory to build a basic model on the selection of an urban neighborhood park location under uncertainty factors. Finally, the use of Genetic algorithm in RISK Optimizer effectively shortens the computation time that would generate the optimum results in the selection of a location for the park facility. A case study has been made using the proposed model in selecting a location for a park facility in the West District of Taichung City in Taiwan. the proposed model considered the uncertain population of the neighborhood in the future and was able to generate results that reflected the caudal circumstance better than the existing models. |
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