城市自适应出行热点探测及区域划分方法OA北大核心
Urban Adaptive Travel Hotspot Detection and Area Division Method
针对固定带宽热点识别在多密度出行数据中的适应性不足,以及传统区域划分方法引发的空间异质性表达失真问题,本文提出了1种面向城市交通的自适应热点探测与动态区域划分方法.构建自适应出行密度估计模型,通过先导估计确定全局初始带宽,结合最大似然估计标定敏感性参数,并引入局部带宽修正系数和动态带宽调整机制,实现研究带宽的自动调节.开发多级热点识别技术,采用移动窗口极值检测与自然断裂分级相结合策略,构建出行热点评价体系.以热点为控制点生成泰森多边形作为基本分析单元,保持空间异质性特征,结合出行热度、莫兰指数等五类指标评估区域划分效果.以哈尔滨主城区出租车轨迹数据为样本进行实证,结果显示:较固定带宽方法,本方法热点识别数量提升2.1~6.7倍,区域热度差异标准差达572.8;面要素内点数据平均中心与重心距离为137.8 m,较传统栅格方法减少15.1%~74.3%,验证了区域划分的均质性优势;块金基台比降低至0.135,单元内部变异度减少39.6%,表明其能有效保留数据聚集特征并降低可塑性面积单元问题影响;自适应方法在研究区域内共得到了1 719个出行热点,在哈尔滨西站等区域精准定位路网交叉口热点,边界清晰且地理语义明确.研究结果为多密度出行数据分析提供了自适应框架,可支持出租车调度、需求预测等应用场景.
To address the limitations of fixed bandwidth hotspot detection in multi-density travel data and the spatial heterogeneity distortion from traditional zoning methods,this study proposes an adaptive hotspot detection and dy-namic regional division method for urban transportation.An adaptive travel density estimation model is developed.A global initial bandwidth is determined via pilot estimation,and sensitivity parameters are calibrated using maxi-mum likelihood estimation.Local bandwidth correction factors and a dynamic bandwidth adjustment mechanism en-able automatic research bandwidth regulation.A multilevel hotspot identification technology is developed,combin-ing moving window extreme value detection with natural breaks classification to form a travel hotspot evaluation system.Furthermore,Voronoi polygons are generated using the hotspots as control points to serve as basic analysis units while preserving spatial heterogeneity characteristics.The effectiveness of regional division is evaluated using 5 indicators,including travel heat,Moran's index,and others.Empirical analysis using Harbin's main urban area taxi trajectory data shows that,compared with fixed bandwidth methods,the proposed method increases identified hotspots by 2.1 to 6.7 times.The standard deviation of regional travel heat differences is 572.8.The average dis-tance between point data centroids within areal elements and the geometric center is 137.8 m,a 15.1%to 74.3%re-duction from traditional grid methods,verifying the homogeneity advantage of the regional division.The nugget to sill ratio drops to 0.135,and internal unit variation decreases by 39.6%,indicating the method effectively retains da-ta aggregation characteristics and reduces the modifiable areal unit problem's impact.The adaptive method identi-fies 1,719 travel hotspots in the study area and accurately locates road intersection hotspots in areas like Harbin West Station,with clear boundaries and explicit geographical semantics.The results provide an adaptive framework for multi-density travel data analysis,supporting applications such as taxi dispatching and demand forecasting.
闫宇辰;汪语心;全威
哈尔滨工业大学交通科学与工程学院 哈尔滨 150000哈尔滨工业大学交通科学与工程学院 哈尔滨 150000哈尔滨工业大学交通科学与工程学院 哈尔滨 150000
交通工程
城市交通热点探测核密度区域划分多密度数据
urban transportationhotspot detectionkernel densityregional divisionmulti-density data
《交通信息与安全》 2025 (2)
85-94,10
国家自然科学基金项目(42171451)资助
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