Research Terms
Automation, artificial intelligence, and sensors are creating new manufacturing and distribution processes. Digitized robots perform tasks (or collaborate), and humans supervise manufacturing and quality. The COVID-19 pandemic has created a new manufacturing norm involving a remote workforce, leading to a shortage of staff where in-person human operations are still required. New technologies are needed to bridge this gap and help industries adapt to the new standard of manufacturing.
Researchers at Florida Atlantic University have developed a new cyber manufacturing platform comprising a virtual environment for production line workers. It enables employees to accomplish daily tasks in real-time through virtual meetings with robotic-arm (any robotic system) partners. Factory workers can meet with robotic-arm partners through video communication systems to perform tasks in the factory. In addition, the system adjusts its behavior (e.g., slowing) to respond to a worker's emotional state, such as trust, fatigue, and other parameters.
FAU is seeking partners to advance this technology into the marketplace through licensing or development partnerships.
Significant gains in the commercialization of automated vehicle technologies have occurred over the past decade, in which a large number of vehicles on the road today feature some level of automation. Automation can be adaptive cruise control, automatic emergency braking, lane keeping assist, lane change assist, and pedestrian detection, to name a few. These features and systems range from Level 0 systems, which provide warnings but do not directly affect vehicle control (e.g., blind spot detection and backup cameras), to Level 2 technologies, that take control of the accelerating, braking, and steering systems.
A researcher at FAU has developed a novel adaptive driving mode for autonomous vehicles that mimics the driver's driving style and behavior. With this adaptive mode, the vehicle can learn the driving styles and behaviors of its various drivers and imitate that behavior (within safe driving limits). This provides a more comfortable and natural-feeling driving experience. The learning function of the adaptive driving mode allows the driver to operate the vehicle in fully manual mode while the system observes the driver's tendencies and behaviors, such as preferred driving lane, speed, braking style, following distance, preferred routes, etc. Then the technology correlates those behaviors to driving conditions based on vehicle sensors, environmental factors, and other vehicle data.
In addition to adaptive driving mode, the researcher has also developed adaptive mood control, in which the vehicle can learn the driver's preferred driving style based on their emotional and physiological responses. The learning function of the adaptive mood control utilizes both intrusive (e.g. seat and steering wheel mounted skin response sensors) and non-intrusive (cameras, microphones) devices to monitor and detect changes in the driver's emotional and physiological response. This information can all be used to characterize the driver's mood. Changes to such measurements can indicate anxiety, fear, distrust, discomfort, or unease in response to various driving and environmental related factors.
FAU is seeking partners to advance this technology into the marketplace through licensing or development partnerships.
Motor vehicle injuries are a leading cause of severe injury and death. There is a need for safety systems that encourage drivers to operate vehicles in a safer manner around vehicles carrying children and other vulnerable populations, such as older adults and the disabled.
Researchers at Florida Atlantic University have developed an automated automotive safety system which both alerts adjacent drivers to the presence of vulnerable occupants in the vehicle while also alerting the driver to external unsafe driving conditions and driving behaviors. External sensors report on speed, distance and driving patterns of adjacent vehicles, as well as road and weather conditions. The system notifies the driver of changes in weather and road conditions, to changes in driving behavior of adjacent vehicles, and when an adjacent vehicle exceeds a speed threshold or the distance between the vehicle and the adjacent vehicle falls below a minimum separation distance. Digital panels located on the back and side windows of the vehicle display phrases such as "Baby on Board". If the system detects unsafe driving conditions, the display will change to red, then flashing red to warn adjacent drivers.
FAU is seeking partners to advance this technology into the marketplace through development partnerships.
Automation, artificial intelligence, and sensors are creating new manufacturing and distribution processes. Digitized robots perform tasks (or collaborate), and humans supervise manufacturing and quality. The COVID-19 pandemic has created a new manufacturing norm involving a remote workforce, leading to a shortage of staff where in-person human operations are still required. New technologies are needed to bridge this gap and help industries adapt to the new standard of manufacturing.
Researchers at Florida Atlantic University have developed a new cyber manufacturing platform comprising a virtual environment for production line workers. It enables employees to accomplish daily tasks in real-time through virtual meetings with robotic-arm (any robotic system) partners. Factory workers can meet with robotic-arm partners through video communication systems to perform tasks in the factory. In addition, the system adjusts its behavior (e.g., slowing) to respond to a worker's emotional state, such as trust, fatigue, and other parameters.
FAU is seeking partners to advance this technology into the marketplace through licensing or development partnerships.