利用被动式多模式传感器数据进行城市表面热模拟

Dimitri Bulatov, D. Frommholz, B. Kottler, Kevin Qui, Eva Strauss
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摘要

摘要本文展示了以被动机载多模态传感器数据为基础的综合工作流程,用于模拟建筑密集区的热行为,重点关注城市热岛。底层参数化模型或数字孪生模型的几何图形来自高分辨率的天底和斜射 RGB、近红外和热红外图像。捕捉到的位图经过摄影测量处理,形成综合表面模型、地形、密集三维点云和真实正交马赛克。根据投影点集重建建筑几何图形,其程序包括勾勒轮廓、分析屋顶和外墙细节、三角测量和纹理映射。在热模拟方面,地面的组成是通过基于改进的多模态 DeepLab v3+ 架构的监督机器学习来确定的。植被以单棵树木和较大树木区域的形式获取,并添加到网格地形中。建筑材料根据可用的视觉、红外和表面平面信息以及公开参考资料进行分配。利用实际气象数据,通过评估与建模场景面相一致的三角形层的传导、对流、辐射和发射能量通量,可以计算出任何时间段的地表温度。对德国柏林莫阿比特区样本数据集的研究结果表明,模拟器能够高效地输出相对较大数据集的表面温度。与热红外图像相比,数据和模型方面的一些不足导致测量温度和模拟温度之间偶尔出现偏差。针对其中的一些不足,提出了未来工作中的改进建议。
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Using Passive Multi-Modal Sensor Data for Thermal Simulation of Urban Surfaces
Abstract. This paper showcases an integrated workflow hinged on passive airborne multi-modal sensor data for the simulation of the thermal behavior of built-up areas with a focus on urban heat islands. The geometry of the underlying parametrized model, or digital twin, is derived from high-resolution nadir and oblique RGB, near-infrared and thermal infrared imagery. The captured bitmaps get photogrammetrically processed into comprehensive surface models, terrain, dense 3D point clouds and true-ortho mosaics. Building geometries are reconstructed from the projected point sets with procedures presupposing outlining, analysis of roof and fac¸ade details, triangulation, and texturing mapping. For thermal simulation, the composition of the ground is determined using supervised machine learning based on a modified multi-modal DeepLab v3+ architecture. Vegetation is retrieved as individual trees and larger tree regions to be added to the meshed terrain. Building materials are assigned from the available visual, infrared and surface planarity information as well as publicly available references. With actual weather data, surface temperatures can be calculated for any period of time by evaluating conductive, convective, radiative and emissive energy fluxes for triangular layers congruent to the faces of the modeled scene. Results on a sample dataset of the Moabit district in Berlin, Germany, showed the ability of the simulator to output surface temperatures of relatively large datasets efficiently. Compared to the thermal infrared images, several insufficiencies in terms of data and model caused occasional deviations between measured and simulated temperatures. For some of these shortcomings, improvement suggestions within future work are presented.
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