产品系列 / 类别
|
产品 / 话题
|
类型
|
标题
|
日期
|
ASCMO, … | ASCET TIP, ASCET V4.0, ASCET V4.1, ASCET V4.2, ASCET V5.0, … | Software | LiMa (ETAS License Manager)
LiMa (ETAS License Manager)
This LiMa upgrade contains the support for machine based FlexNet-Embedded (FNE) licenses. In case of new ordered machine based license(s) for formerly released ETAS-SW, this upgrade supports additionally the activation of new FlexNet-Embedded (FNE) license type. All existing FlexNet-Publisher (FNP) license types are still supported.
If you need more detailed information about this ETAS License Manager … | 2024/11/29 |
ASCMO | ASCMO, ASCMO-DESK, ASCMO-DYNAMIC, ASCMO-MOCA, ASCMO-STATIC | Software | ASCMO V5.14
ETAS ASCMO V5.14
ASCMO V5.14 is the version released November 2024.
ETAS ASCMO is the ideal solution for data-based modeling and model-based calibration. It enables users to accurately model, analyze, and optimize the behavior of complex systems based on only a few measurements and using advanced algorithms. Both, steady-state and transient system behaviors can be captured. Furthermore, it allows optimizing parameters of physics … | 2024/11/21 |
ASCMO | ASCMO-DYNAMIC | Manual / Technical Documentation | ASCMO-DYNAMIC 用户指南
| 2024/10/01 |
ASCMO | ASCMO | Manual / Technical Documentation | ASCMO 用户指南
| 2024/09/25 |
ASCMO | ASCMO-MOCA | Manual / Technical Documentation | ASCMO-MOCA 用户指南
| 2024/09/21 |
ASCMO | ASCMO | Manual / Technical Documentation | ETAS ASCMO Release Notes
| 2024/05/29 |
ASCMO, … | ASCMO, INCA-FLOW | Flyer / Brochure / White Paper | Fuel Cell Stack Power Prediction Model Using Gaussian Process Regression Mode
Fuel Cell Stack Power Prediction Model Using Gaussian Process Regression Mode
A fuel cell stack power prediction model that takes into consideration the various stack control parameters is important in the optimization design of the controls for each item of auxiliary equipment in a system equivalent to that of an actual vehicle. However, creating a model for quantitative prediction of stack power requires large amounts of data concerning … | 2023/08/05 |
ASCMO, … | ASCET TIP, ASCET V4.0, ASCET V4.1, ASCET V4.2, ASCET V5.0, … | Manual / Technical Documentation | 安全警告
| 2023/07/01 |
ASCMO | ASCMO | Flyer / Brochure / White Paper | ASCMO Flyer
ETAS ASCMO
Data-based Modeling and Model-based Calibration
ETAS ASCMO is the ideal solution for databased modeling and model-based calibration. It enables users to accurately model, analyze, and optimize the behavior of complex systems with few measurements and advanced algorithms. Both steady-state and transient system behaviors can be captured.
At a Glance
Capture of complex system behavior in both steady-state and … | 2023/06/29 |
ASCMO | ASCMO | Known Issue Report | Known Issue Report ASCMO
Known Issue Report ASCMO
Even after careful development and extensive release testing, we occasionally find defects in our products after they have been released into the marketplace. We correct minor problems in the course of our regular maintenance and development activities.
For more significant problems, we publish a Known Issue Report (KIR) to inform you about the technical effects of a known problem as well as offer … | 2022/07/09 |
ASCMO | ASCMO | Known Issue Report | ASCMO Statement Log4j vulnerability V5.8
| 2022/04/29 |