11,245 research outputs found
A Learning-based Stochastic MPC Design for Cooperative Adaptive Cruise Control to Handle Interfering Vehicles
Vehicle to Vehicle (V2V) communication has a great potential to improve
reaction accuracy of different driver assistance systems in critical driving
situations. Cooperative Adaptive Cruise Control (CACC), which is an automated
application, provides drivers with extra benefits such as traffic throughput
maximization and collision avoidance. CACC systems must be designed in a way
that are sufficiently robust against all special maneuvers such as cutting-into
the CACC platoons by interfering vehicles or hard braking by leading cars. To
address this problem, a Neural- Network (NN)-based cut-in detection and
trajectory prediction scheme is proposed in the first part of this paper. Next,
a probabilistic framework is developed in which the cut-in probability is
calculated based on the output of the mentioned cut-in prediction block.
Finally, a specific Stochastic Model Predictive Controller (SMPC) is designed
which incorporates this cut-in probability to enhance its reaction against the
detected dangerous cut-in maneuver. The overall system is implemented and its
performance is evaluated using realistic driving scenarios from Safety Pilot
Model Deployment (SPMD).Comment: 10 pages, Submitted as a journal paper at T-I
Human Motion Trajectory Prediction: A Survey
With growing numbers of intelligent autonomous systems in human environments,
the ability of such systems to perceive, understand and anticipate human
behavior becomes increasingly important. Specifically, predicting future
positions of dynamic agents and planning considering such predictions are key
tasks for self-driving vehicles, service robots and advanced surveillance
systems. This paper provides a survey of human motion trajectory prediction. We
review, analyze and structure a large selection of work from different
communities and propose a taxonomy that categorizes existing methods based on
the motion modeling approach and level of contextual information used. We
provide an overview of the existing datasets and performance metrics. We
discuss limitations of the state of the art and outline directions for further
research.Comment: Submitted to the International Journal of Robotics Research (IJRR),
37 page
Multi-Level Data-Driven Battery Management: From Internal Sensing to Big Data Utilization
Battery management system (BMS) is essential for the safety and longevity of lithium-ion battery (LIB) utilization. With the rapid development of new sensing techniques, artificial intelligence and the availability of huge amounts of battery operational data, data-driven battery management has attracted ever-widening attention as a promising solution. This review article overviews the recent progress and future trend of data-driven battery management from a multi-level perspective. The widely-explored data-driven methods relying on routine measurements of current, voltage, and surface temperature are reviewed first. Within a deeper understanding and at the microscopic level, emerging management strategies with multi-dimensional battery data assisted by new sensing techniques have been reviewed. Enabled by the fast growth of big data technologies and platforms, the efficient use of battery big data for enhanced battery management is further overviewed. This belongs to the upper and the macroscopic level of the data-driven BMS framework. With this endeavor, we aim to motivate new insights into the future development of next-generation data-driven battery management
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Development of Eco-Friendly Ramp Control for Connected and Automated Electric Vehicles
With on-board sensors such as camera, radar, and Lidar, connected and automated vehicles (CAVs) can sense the surrounding environment and be driven autonomously and safely by themselves without colliding into other objects on the road. CAVs are also able to communicate with each other and roadside infrastructure via vehicle-to-vehicle and vehicle-to-infrastructure communications, respectively, sharing information on the vehicles’ states, signal phase and timing (SPaT) information, enabling CAVs to make decisions in a collaborative manner. As a typical scenario, ramp control attracts wide attention due to the concerns of safety and mobility in the merging area. In particular, if the line-of-the-sight is blocked (because of grade separation), then neither mainline vehicles nor on-ramp vehicles may well adapt their own dynamics to perform smoothed merging maneuvers. This may lead to speed fluctuations or even shockwave propagating upstream traffic along the corridor, thus potentially increasing the traffic delays and excessive energy consumption. In this project, the research team proposed a hierarchical ramp merging system that not only allowed microscopic cooperative maneuvers for connected and automated electric vehicles on the ramp to merge into mainline traffic flow, but also had controllability of ramp inflow rate, which enabled macroscopic traffic flow control. A centralized optimal control-based approach was proposed to both smooth the merging flow and improve the system-wide mobility of the network. Linear quadratic trackers in both finite horizon and receding horizon forms were developed to solve the optimization problem in terms of path planning and sequence determination, and a microscopic electric vehicle (EV) energy consumption model was applied to estimate the energy consumption. The simulation results confirmed that under the regulated inflow rate, the proposed system was able to avoid potential traffic congestion and improve the mobility (in terms of average speed) as much as 115%, compared to the conventional ramp metering and the ramp without any control approach. Interestingly, for EVs (connected and automated EVs in this study), the improved mobility may not necessarily result in the reduction of energy consumption. The “sweet spot” of average speed ranges from 27–34 mph for the EV models in this study.View the NCST Project Webpag
Detección y evasión de obstáculos usando redes neuronales híbridas convolucionales y recurrentes
[ES] Los términos "detección y evasión" hacen referencia al requerimiento esencial de un piloto para "ver y evitar" colisiones aire-aire. Para introducir UAVs en el día a día, esta funcion del piloto debe ser replicada por el UAV. En pequeños UAVs como pueden ser los destinados a la entrega de pedidos, existen ciertos aspectos limitantes en relación a tamaño, peso y potencia, por lo que sistemas cooperativos como TCAS o ADS-B no pueden ser utilizados y en su lugar otros sistemas como cámaras electro-ópticas son candidatos potenciales para obtener soluciones efectivas. En este tipo de aplicaciones, la solución debe evitar no solo otras aeronaves sino también otros obstáculos que puedan haber cerca de la superficie donde probablemente se operará la mayoría del tiempo.
En este proyecto se han utilizado redes neuronales híbridas que incluyen redes neuronales convolucionales como primera etapa para clasificar objetos y redes neuronales recurrentes a continuación para deteminar la secuencia de eventos y actuar consecuentemente. Este tipo de red neuronal es muy actual y no se ha investigado en exceso hasta la fecha, por lo que el principal objetivo del proyecto es estudiar si podrían ser aplicadas en sistemas de "detección y evasión". Algoritmos de acceso libre han sido fusionados y mejorados para crear un nuevo modelo capaz de funcionar en este tipo de aplicaciones.
A parte del algoritmo de detección y seguimiento, la parte correspondiente a la evasión de colisiones también fue desarrollada. Un filtro Kalman extendido se utilizó para estimar el rango relativo entre un obstáculo y el UAV. Para obtener una resolución sobre la posibilidad de conflicto, una aproximación estocástica fue considerada. Finalmente, una maniobra de evasión geométrica fue diseñada para utilizar si fuera necesario. Esta segunda parte fue evaluada mediante una simulación que también fue creada para el proyecto.
Adicionalmente, un ensayo experimental se llevó a cabo para integrar las dos partes del algoritmo. Datos del ruido de la medida fueron experimentalmente obtenidos y se comprobó que las colisiones se podían evitar satisfactoriamente con dicho valor.
Las principales conclusiones fueron que este nuevo tipo funciona más rápido que los métodos basados en redes neuronales más comunes, por lo que se recomiendo seguir investigando en ellas. Con la técnica diseñada, se encuentran disponibles multiples parámetros de diseño que pueden ser adaptados a diferentes circumstancias y factores. Las limitaciones principales encontradas se centran en la detección de obstáculos y en la estimación del rango relativo, por lo que se sugiere que la futura investigación se dirija en estas direcciones.[EN] A Sense and Avoid technique has been developed in this master thesis. A special method for small UAVs which use only an electro-optical camera as the sensor has been considered. This method is based on a sophisticated processing solution using hybrid Convolutional and Recurrent Neural Networks. The aim is to study the feasibility of this kind of neural networks in Sense and Avoid applications.
First, the detection and tracking part of the algorithm is presented. Two models were used for this purpose: a Convolutional Neural Network called YOLO and a hybrid Convolutional and Recurrent Neural Network called Re3.
After that, the collision avoidance part was designed. This consisted of the obstacle relative range estimation using an Extended Kalman Filter, the conflict probability calculation using an analytical approach and the geometric avoidance manoeuvre generation.
Both parts were assessed separately by videos and simulations respectively, and then an experimental test was carried out to integrate them. Measurement noise was experimentally tested and simulations were performed again to check that collisions were avoided with the considered detection and tracking approach.
Results showed that the considered approach can track objects faster than the most common computer vision methods based on neural networks. Furthermore, the conflict was successfully avoided with the proposed technique. Design parameters were allowed to adjust speed and maneuvers accordingly to the expected environment or the required level of safety.
The main conclusion was that this kind of neural network could be successfully applied to Sense and Avoid systems.Vidal Navarro, D. (2018). Sense and avoid using hybrid convolutional and recurrent neural networks. Universitat Politècnica de València. http://hdl.handle.net/10251/142606TFG
Intelligent Transportation Systems, Hybrid Electric Vehicles, Powertrain Control, Cooperative Adaptive Cruise Control, Model Predictive Control
Information obtainable from Intelligent Transportation Systems (ITS) provides the possibility of improving the safety and efficiency of vehicles at different levels. In particular, such information has the potential to be utilized for prediction of driving conditions and traffic flow, which allows us to improve the performance of the control systems in different vehicular applications, such as Hybrid Electric Vehicles (HEVs) powertrain control and Cooperative Adaptive Cruise Control (CACC). In the first part of this work, we study the design of an MPC controller for a Cooperative Adaptive Cruise Control (CACC) system, which is an automated application that provides the drivers with extra benefits, such as traffic throughput maximization and collision avoidance. CACC systems must be designed in a way that are sufficiently robust against all special maneuvers such as interfering vehicles cutting-into the CACC platoons or hard braking by leading cars. To address this problem, we first propose a Neural- Network (NN)-based cut-in detection and trajectory prediction scheme. Then, the predicted trajectory of each vehicle in the adjacent lanes is used to estimate the probability of that vehicle cutting-into the CACC platoon. To consider the calculated probability in control system decisions, a Stochastic Model Predictive Controller (SMPC) needs to be designed which incorporates this cut-in probability, and enhances the reaction against the detected dangerous cut-in maneuver. However, in this work, we propose an alternative way of solving this problem. We convert the SMPC problem into modeling the CACC as a Stochastic Hybrid System (SHS) while we still use a deterministic MPC controller running in the only state of the SHS model. Finally, we find the conditions under which the designed deterministic controller is stable and feasible for the proposed SHS model of the CACC platoon. In the second part of this work, we propose to improve the performance of one of the most promising realtime powertrain control strategies, called Adaptive Equivalent Consumption Minimization Strategy (AECMS), using predicted driving conditions. In this part, two different real-time powertrain control strategies are proposed for HEVs. The first proposed method, including three different variations, introduces an adjustment factor for the cost of using electrical energy (equivalent factor) in AECMS. The factor is proportional to the predicted energy requirements of the vehicle, regenerative braking energy, and the cost of battery charging and discharging in a finite time window. Simulation results using detailed vehicle powertrain models illustrate that the proposed control strategies improve the performance of AECMS in terms of fuel economy by 4\%. Finally, we integrate the recent development in reinforcement learning to design a novel multi-level power distribution control. The proposed controller reacts in two levels, namely high-level and low-level control. The high-level control decision estimates the most probable driving profile matched to the current (and near future) state of the vehicle. Then, the corresponding low-level controller of the selected profile is utilized to distribute the requested power between Electric Motor (EM) and Internal Combustion Engine (ICE). This is important because there is no other prior work addressing this problem using a controller which can adjust its decision to the driving pattern. We proposed to use two reinforcement learning agents in two levels of abstraction. The first agent, selects the most optimal low-level controller (second agent) based on the overall pattern of the drive cycle in the near past and future, i.e., urban, highway and harsh. Then, the selected agent by the high-level controller (first agent) decides how to distribute the demanded power between the EM and ICE. We found that by carefully designing a training scheme, it is possible to effectively improve the performance of this data-driven controller. Simulation results show up to 6\% improvement in fuel economy compared to the AECMS
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