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首页> 外文期刊>The Baltic journal of road and bridge engineering >PAVEMENT DIAGNOSIS ACCURACY WITH CONTROLLED APPLICATION OF ARTIFICIAL NEURAL NETWORK
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PAVEMENT DIAGNOSIS ACCURACY WITH CONTROLLED APPLICATION OF ARTIFICIAL NEURAL NETWORK

机译:人工神经网络控制应用的路面诊断准确性

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Results of research studies, the amount of input data available in pavement management system databases, and artificial intelligence methods serve as versatile tools, well-suited for the analysis conducted as a part of pavement management system. The key source of new and to be employed knowledge is provided. In terms of e.g. assessing thickness of bituminous pavement layers, the default solution is pavement drilling, but for the purposes of pavement management it is prohibitively expensive. This paper attempts to test the original concept of employing an empirical relationship in an algorithm verifying results produced by the artificial neural network method. The assumed multi-stage asphalt pavement layer thickness identification control process boils down to evaluating test results of the road section built using both, reinforced and non-reinforced pavement structure. By default, the artificial neural network training set has not included the reinforced pavement sections. Hence, it has been possible to identify "perturbations" in assumptions underlying the training set. Pavement test section points' results are indicated in the automated manner, which, in line with implemented methods, is not generated by perturbations caused by divergence between actual pavement structure and assumptions taken for purposes of building pavement management system database, and the artificial neural network learning dataset is based on.
机译:研究结果,路面管理系统数据库中可用的输入数据量以及人工智能方法可作为多功能工具,非常适合作为路面管理系统一部分进行的分析。提供了新知识和将要使用的知识的关键来源。在例如在评估沥青路面层的厚度时,默认的解决方案是路面钻孔,但就路面管理而言,它的成本过高。本文尝试在验证由人工神经网络方法产生的结果的算法中测试采用经验关系的原始概念。假定的多级沥青路面层厚度识别控制过程归结为评估使用增强和非增强路面结构建造的路段的测试结果。默认情况下,人工神经网络训练集不包括增强的路面部分。因此,有可能在训练集基础上的假设中识别“扰动”。路面测试截面点的结果以自动化方式显示,与实施的方法一致,它不是由实际路面结构与为建立路面管理系统数据库而进行的假设和人工神经网络之间的差异引起的扰动产生的学习数据集基于。

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