B60W2754/00

VEHICLE TO VEHICLE COMMUNICATION

A system for communication between a first electric vehicle, and a second electric vehicle following the first electric vehicle on a route comprises a controller communicatively coupled to a battery associated with the second electric vehicle. The controller is configured to receive a set of first operating parameters associated with the first electric vehicle. The controller determines whether to adjust a component operating parameter of at least one component of the second electric vehicle based on the set of first operating parameters. The controller generates an adjustment command configured to adjust a component operating parameter of the at least one component responsive to the determination. The adjustment of the component operating parameter is configured to manage a state of charge of the battery associated with the second electric vehicle.

Control of autonomous vehicle based on determined yaw parameter(s) of additional vehicle

Determining yaw parameter(s) (e.g., at least one yaw rate) of an additional vehicle that is in addition to a vehicle being autonomously controlled, and adapting autonomous control of the vehicle based on the determined yaw parameter(s) of the additional vehicle. For example, autonomous steering, acceleration, and/or deceleration of the vehicle can be adapted based on a determined yaw rate of the additional vehicle. In many implementations, the yaw parameter(s) of the additional vehicle are determined based on data from a phase coherent Light Detection and Ranging (LIDAR) component of the vehicle, such as a phase coherent LIDAR monopulse component and/or a frequency-modulated continuous wave (FMCW) LIDAR component.

Training Machine Learning Model Based On Training Instances With: Training Instance Input Based On Autonomous Vehicle Sensor Data, and Training Instance Output Based On Additional Vehicle Sensor Data

Various implementations described herein generate training instances that each include corresponding training instance input that is based on corresponding sensor data of a corresponding autonomous vehicle, and that include corresponding training instance output that is based on corresponding sensor data of a corresponding additional vehicle, where the corresponding additional vehicle is captured at least in part by the corresponding sensor data of the corresponding autonomous vehicle. Various implementations train a machine learning model based on such training instances. Once trained, the machine learning model can enable processing, using the machine learning model, of sensor data from a given autonomous vehicle to predict one or more properties of a given additional vehicle that is captured at least in part by the sensor data.

System and method for applying vehicle settings in a vehicle
10737701 · 2020-08-11 · ·

A method and system for applying vehicle settings to a vehicle. The method and system include receiving a device identification (ID) from at least one of: a first portable device and a second portable device. The method and system additionally include identifying a user settings profile that is associated to the device ID. The method and system also include determining if the user settings profile has been updated since a last ignition cycle of the vehicle. The method and system further include applying the user settings profile to control a vehicle system, wherein the user settings profile is retrieved from at least one of: a central user settings data repository, a telematics unit of the vehicle, and a head unit of the vehicle.

Training machine learning model based on training instances with: training instance input based on autonomous vehicle sensor data, and training instance output based on additional vehicle sensor data

Various implementations described herein generate training instances that each include corresponding training instance input that is based on corresponding sensor data of a corresponding autonomous vehicle, and that include corresponding training instance output that is based on corresponding sensor data of a corresponding additional vehicle, where the corresponding additional vehicle is captured at least in part by the corresponding sensor data of the corresponding autonomous vehicle. Various implementations train a machine learning model based on such training instances. Once trained, the machine learning model can enable processing, using the machine learning model, of sensor data from a given autonomous vehicle to predict one or more properties of a given additional vehicle that is captured at least in part by the sensor data.

Delayed parking optimization of autonomous vehicles

A method for the delayed parking optimization of an autonomous vehicle includes activating a delayed parking optimization mode in a vehicle and, during the delayed parking optimization mode, detecting a presence of one or more passengers in the vehicle. On condition that no further passengers are detected in the vehicle, a delay period is initiated subsequent to which the vehicle engages the transmission of the vehicle from park to reverse, applies power to cause the vehicle to back out of the parking spot onto the roadway, engages the transmission into drive, applies power and manages steering and braking of the vehicle in order to navigate the vehicle forward on the roadway beyond the parking spot, engages the transmission into reverse, applies power and manages steering of the vehicle to cause the vehicle to back into the parking spot and engages the transmission of the vehicle into park.

Control of autonomous vehicle based on environmental object classification determined using phase coherent LIDAR data

Determining classification(s) for object(s) in an environment of autonomous vehicle, and controlling the vehicle based on the determined classification(s). For example, autonomous steering, acceleration, and/or deceleration of the vehicle can be controlled based on determined pose(s) and/or classification(s) for objects in the environment. The control can be based on the pose(s) and/or classification(s) directly, and/or based on movement parameter(s), for the object(s), determined based on the pose(s) and/or classification(s). In many implementations, pose(s) and/or classification(s) of environmental object(s) are determined based on data from a phase coherent Light Detection and Ranging (LIDAR) component of the vehicle, such as a phase coherent LIDAR monopulse component and/or a frequency-modulated continuous wave (FMCW) LIDAR component.

Control of autonomous vehicle based on determined yaw parameter(s) of additional vehicle

Determining an instantaneous vehicle characteristic (e.g., at least one yaw rate) of an additional vehicle that is in addition to a vehicle being autonomously controlled, and adapting autonomous control of the vehicle based on the determined instantaneous vehicle characteristic of the additional vehicle. For example, autonomous steering, acceleration, and/or deceleration of the vehicle can be adapted based on a determined instantaneous vehicle characteristic of the additional vehicle. In many implementations, the instantaneous vehicle characteristics of the additional vehicle are determined based on data from a phase coherent Light Detection and Ranging (LIDAR) component of the vehicle, such as a phase coherent LIDAR monopulse component and/or a frequency-modulated continuous wave (FMCW) LIDAR component.

Control Of Autonomous Vehicle Based On Determined Yaw Parameter(s) of Additional Vehicle

Determining yaw parameter(s) (e.g., at least one yaw rate) of an additional vehicle that is in addition to a vehicle being autonomously controlled, and adapting autonomous control of the vehicle based on the determined yaw parameter(s) of the additional vehicle. For example, autonomous steering, acceleration, and/or deceleration of the vehicle can be adapted based on a determined yaw rate of the additional vehicle. In many implementations, the yaw parameter(s) of the additional vehicle are determined based on data from a phase coherent Light Detection and Ranging (LIDAR) component of the vehicle, such as a phase coherent LIDAR monopulse component and/or a frequency-modulated continuous wave (FMCW) LIDAR component.

Training Machine Learning Model Based On Training Instances With: Training Instance Input Based On Autonomous Vehicle Sensor Data, and Training Instance Output Based On Additional Vehicle Sensor Data

Various implementations described herein generate training instances that each include corresponding training instance input that is based on corresponding sensor data of a corresponding autonomous vehicle, and that include corresponding training instance output that is based on corresponding sensor data of a corresponding additional vehicle, where the corresponding additional vehicle is captured at least in part by the corresponding sensor data of the corresponding autonomous vehicle. Various implementations train a machine learning model based on such training instances. Once trained, the machine learning model can enable processing, using the machine learning model, of sensor data from a given autonomous vehicle to predict one or more properties of a given additional vehicle that is captured at least in part by the sensor data.