Green technology adoption and fleet deployment for new and aged ships considering maritime decarbonization
Maritime decarbonization and strict international regulations have forced liner companies to
find new solutions for reducing fuel consumption and greenhouse gas emissions in recent …
find new solutions for reducing fuel consumption and greenhouse gas emissions in recent …
Controlling chaos using edge computing hardware
Abstract Machine learning provides a data-driven approach for creating a digital twin of a
system–a digital model used to predict the system behavior. Having an accurate digital twin …
system–a digital model used to predict the system behavior. Having an accurate digital twin …
Nonlinear programming for fleet deployment, voyage planning and speed optimization in sustainable liner ship**
Limiting carbon dioxide emissions is one of the main concerns of green ship**. As an
important carbon intensity indicator, the Energy Efficiency Operational Index (EEOI) …
important carbon intensity indicator, the Energy Efficiency Operational Index (EEOI) …
[HTML][HTML] Robust design for underground metro systems with modular vehicles
The asymmetric demands of metro lines in megacities can cause high passenger wait times
and substantial underutilization of vehicle capacity. The problem is difficult to address …
and substantial underutilization of vehicle capacity. The problem is difficult to address …
[HTML][HTML] An Efficient Parallel CRC Computing Method for High Bandwidth Networks and FPGA Implementation
L Zhang, S Ye, Z Gou, X Yang, Q Dai, F Wang, Y Lin - Electronics, 2024 - mdpi.com
A cyclic redundancy check (CRC) is a widely used technique in data communication for
detecting data transmission errors. However, existing FPGA-based parallel CRC hardware …
detecting data transmission errors. However, existing FPGA-based parallel CRC hardware …
[HTML][HTML] Deep knowledge distillation: A self-mutual learning framework for traffic prediction
Y Li, P Li, D Yan, Y Liu, Z Liu - Expert Systems with Applications, 2024 - Elsevier
Traffic flow prediction in spatio-temporal networks is a crucial aspect of Intelligent
Transportation Systems (ITS). Existing traffic flow forecasting methods, particularly those …
Transportation Systems (ITS). Existing traffic flow forecasting methods, particularly those …
Ultra-Fast Nonlinear Model Predictive Control for Motion Control of Autonomous Light Motor Vehicles
Abstract Advanced Driver Assistance System (ADAS) is the latest buzzword in the
automotive industry aimed at reducing human errors and enhancing safety. In ADAS …
automotive industry aimed at reducing human errors and enhancing safety. In ADAS …
An Efficient Accelerator for Nonlinear Model Predictive Control
The computational complexity of Nonlinear Model Predictive Control (NMPC) often hinders
their application to cyber-physical systems with fast dynamics, such as mobile robots or …
their application to cyber-physical systems with fast dynamics, such as mobile robots or …
[HTML][HTML] Real-time fast learning hardware implementation
Machine learning algorithms are widely used in many intelligent applications and cloud
services. Currently, the hottest topic in this field is Deep Learning represented often by …
services. Currently, the hottest topic in this field is Deep Learning represented often by …
AutonomROS: A ReconROS-based Autonomous Driving Unit
Autonomous driving has become an important research area in recent years, and the
corresponding system creates an enormous demand for computations. Heterogeneous …
corresponding system creates an enormous demand for computations. Heterogeneous …