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161.
本文采用有限元软件ABAQUS建立了船舶撞击高桩码头群桩的空间有限元模型。通过计算评估了撞击力、桩体刚度、撞击位置和撞击角度下对群桩结构损伤位置的影响。基于人工神经网络(ANN)方法,对不同参数组合下的群桩结构损伤位置进行了预测,并对ANN方法的可行性进行了评估。  相似文献   
162.
Trip purpose is crucial to travel behavior modeling and travel demand estimation for transportation planning and investment decisions. However, the spatial-temporal complexity of human activities makes the prediction of trip purpose a challenging problem. This research, an extension of work by Ermagun et al. (2017) and Meng et al. (2017), addresses the problem of predicting both current and next trip purposes with both Google Places and social media data. First, this paper implements a new approach to match points of interest (POIs) from the Google Places API with historical Twitter data. Therefore, the popularity of each POI can be obtained. Additionally, a Bayesian neural network (BNN) is employed to model the trip dependence on each individual’s daily trip chain and infer the trip purpose. Compared with traditional models, it is found that Google Places and Twitter information can greatly improve the overall accuracy of prediction for certain activities, including “EatOut”, “Personal”, “Recreation” and “Shopping”, but not for “Education” and “Transportation”. In addition, trip duration is found to be an important factor in inferring activity/trip purposes. Further, to address the computational challenge in the BNN, an elastic net is implemented for feature selection before the classification task. Our research can lead to three types of possible applications: activity-based travel demand modeling, survey labeling assistance, and online recommendations.  相似文献   
163.
Bus fuel economy is deeply influenced by the driving cycles, which vary for different route conditions. Buses optimized for a standard driving cycle are not necessarily suitable for actual driving conditions, and, therefore, it is critical to predict the driving cycles based on the route conditions. To conveniently predict representative driving cycles of special bus routes, this paper proposed a prediction model based on bus route features, which supports bus optimization. The relations between 27 inter-station characteristics and bus fuel economy were analyzed. According to the analysis, five inter-station route characteristics were abstracted to represent the bus route features, and four inter-station driving characteristics were abstracted to represent the driving cycle features between bus stations. Inter-station driving characteristic equations were established based on the multiple linear regression, reflecting the linear relationships between the five inter-station route characteristics and the four inter-station driving characteristics. Using kinematic segment classification, a basic driving cycle database was established, including 4704 different transmission matrices. Based on the inter-station driving characteristic equations and the basic driving cycle database, the driving cycle prediction model was developed, generating drive cycles by the iterative Markov chain for the assigned bus lines. The model was finally validated by more than 2 years of acquired data. The experimental results show that the predicted driving cycle is consistent with the historical average velocity profile, and the prediction similarity is 78.69%. The proposed model can be an effective way for the driving cycle prediction of bus routes.  相似文献   
164.
Deep neural networks (DNNs) have recently demonstrated the capability to predict traffic flow with big data. While existing DNN models can provide better performance than shallow models, it is still an open issue of making full use of spatial-temporal characteristics of the traffic flow to improve their performance. In addition, our understanding of them on traffic data remains limited. This paper proposes a DNN based traffic flow prediction model (DNN-BTF) to improve the prediction accuracy. The DNN-BTF model makes full use of weekly/daily periodicity and spatial-temporal characteristics of traffic flow. Inspired by recent work in machine learning, an attention based model was introduced that automatically learns to determine the importance of past traffic flow. The convolutional neural network was also used to mine the spatial features and the recurrent neural network to mine the temporal features of traffic flow. We also showed through visualization how DNN-BTF model understands traffic flow data and presents a challenge to conventional thinking about neural networks in the transportation field that neural networks is purely a “black-box” model. Data from open-access database PeMS was used to validate the proposed DNN-BTF model on a long-term horizon prediction task. Experimental results demonstrated that our method outperforms the state-of-the-art approaches.  相似文献   
165.
船舶阻力性能对船型参数的确定、船体结构的设计有重要影响。本文以Wigley船模为研究对象,采用CFD方法建立了行船阻力分析系统,以实际海况数据为依据,确定较准确的参数和边界条件,分析了不同航速(傅汝德数)下的低速行船阻力,并与理论公式对比分析。仿真测试结果表明:在实际海况数据下,CFD数值模拟阻力与理论ITTC公式计算的阻力误差在2%以内且发展趋势一致。本文的研究为采用CFD研究行船阻力奠定基础。  相似文献   
166.
实时、精确地获取列车位置信息是保证列车安全有效运行、发挥效率、提供最佳服务的前提。而轨旁传感器将在进行高效、可靠的列车跟踪和定位方面发挥重要作用。文章介绍德国基于光纤传感系统的列车实时精确定位技术,这是一种全新的解决方案,具有独特的优势和可能性。  相似文献   
167.
为实现空车调配与货物列车开行方案协调优化,结合基本运行图架构与车流径路,构建货运时空服务拓展网络。考虑配空与装卸取送、集编发等环节的时间接续要求,节点与区段不对流空车要求,以重车流全程运送与空车配送等广义总费用最少为目标,建立整数规划弧路模型。针对既有算法设计局限性,结合重车或空车配空的时间接续要求,提出将不同的 k 短路重车流方案与空车配空方案相关联的改进可行解构造方法,设计混合差分进化求解算法。实例研究表明,考虑空车调配进行重车、空车流组织协调优化,能够减少空车走行费用,及时满足装车需求,有效保证作业车流配合中转车流集结编组及时挂线,提高方案可实施性。  相似文献   
168.
传统的计算埋设犁土壤挖掘阻力的方法一般采用经验公式计算。经验公式依赖丰富的试验数据,且只能适应特定形状和尺寸的埋设犁。由于埋设犁的形状和尺寸各不相同,基于经验公式计算土壤挖掘阻力的方法准确性不高。根据土力学基本原理,在力学分析的基础上,运用数学方法进行公式推导,得到用于计算不同形状尺寸埋设犁挖掘阻力的理论方法,解决依赖经验公式计算土壤挖掘阻力的局限性。  相似文献   
169.
FPSO (floating, production, storage and offloading) units are widely used in the offshore oil and gas industry. Generally, FPSOs have excellent oil storage capacity owing to their huge oil cargo holds. The volume and distribution of stored oil in the cargo holds influence the strain level of hull girder, especially at critical positions of FPSO. However, strain prediction using structural analysis tools is computationally expensive and time consuming. In this study, a prediction tool based on back-propagation (BP) neural network called GAIFOA-BP is proposed to predict the strain values of concerned positions of an FPSO model under different oil storage conditions. The GAIFOA-BP combines BP model and GAIFOA which is a combination of genetic algorithm (GA) and an improved fruit fly optimization algorithm (IFOA). Results from three benchmark tests show that the GAIFOA-BP model has a remarkable performance. Subsequently, a total of 81 sets of training data and 25 sets of testing data are obtained from experiment using fiber Bragg grating (FBG) sensors installed on the surface of an FPSO model. The numerical results show that the GAIFOA-BP is capable of predicting the strain values with higher accuracy as compared with other BP models. Finally, the reserved GAIFOA-BP model is utilized to predict the strain values under the inputs of a 10-day time series of volume and distribution of stored oil. The predicted strain results are further used to calculate the fatigue consumption of measurement points.  相似文献   
170.
针对现有交通流预测方法未充分考虑多断面车流演变规律,提出基于时延特性建模的时空相关性计算方法. 该方法采用对不同断面、不同时刻交通流的分布相似性度量,对输入的车辆到达数据序列进行切割构建时空相似度矩阵,得到相邻断面之间的时延参数. 基于时延特性建模,将多断面之间的流量信息进行融合,使用长短时记忆(LSTM)网络进行流量预测. 通过对实际路段数据的预测和结果分析,验证所提方法的有效性和实用性.  相似文献   
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