波音游戏平台下载-波音博彩广告网_百家乐园选_sz全讯网新2xb112 (中国)·官方网站

今天是
今日新發布通知公告1條 | 上傳規范

【百家大講堂】第157期:Battery Management System Algorithms using Physics-Based Reduced-Order Models of Lithium-Ion Battery Cells

發布日期:2019-01-04

  講座題目Battery Management System Algorithms using Physics-Based Reduced-Order Models of Lithium-Ion Battery Cells

  報 告 人:Gregory Plett  (美國能源部電動汽車技術創新教育中心主任

  時  間:2019年1月18日(周五)上午9:00

  地  點:中關村校區研究生教學樓101報告廳

  主辦單位:研究生院、機車學院

  報名方式:登錄北京理工大學微信企業號---第二課堂---課程報名中選擇“【百家大講堂】第157期:基于物理的鋰離子電池降階模型的電池管理系統算法”

 

【主講人信息】

 

   

    Gregory Plett is Professor of Electrical and Computer Engineering at the University of Colorado Colorado Springs.  He received his Ph.D. in Electrical Engineering from Stanford University in 1998 and has conducted research in battery-management topics for the past 17 years.  

    Prof. Plett and his colleague Prof. M. Scott Trimboli jointly lead a team of students who are investigating computationally efficient ways to create and implement reduced-order physics-based models of lithium-ion cells, finding methods to determine the parameter values for these cell models using simple laboratory tests, and making the models adaptive so that they capture the dynamics of the battery cell as it ages. These new methods are intended to push the performance of a battery pack to its physical limits while slowing the rate of degradation.

    Prof. Plett has authored two textbooks on battery modeling and battery management, 24 single-author U.S. patents in the area of battery controls, and other publications having a total of over 5600 citations.

 

【講座摘要】   

    Battery-management systems comprise electronics and software designed to monitor the status of a battery pack, estimate its present operating state, and advise the battery load regarding the maximum amount of power that may be sourced or sunk by the load at every point in time while maintaining safety and acceptable battery-pack service life. Present battery-management algorithms base their calculations on empirical equivalent-circuit models of battery cells, which predict input–output behaviors only. Future battery management algorithms will instead use physics-based models of battery cells, which are furthermore able to predict internal cell electrochemical variables. Since it is these internal variables that are the precursors to premature aging, physics-based models are needed to maximize battery-pack performance and battery-pack life simultaneously. However, traditional physics-based models are computationally more demanding than empirical models, which has so far prevented their use in practical battery-management systems.

    This talk will discuss current research at the University of Colorado Colorado Springs to overcome the challenges to using physics-based models in algorithms for battery management. It will give an overview of physics-based models of both ideal-cell dynamics and cell aging, an approach to reduce the computational complexity of the models, methods for determining model parameter values, and state-estimation and controls approaches.


网上现金赌博游戏| 百家百家乐视频游戏世界| 邯郸百家乐官网园怎么样| 百家乐开和几率| 百家乐官网投注组合| 基础百家乐博牌| 百家乐官网沙| 免费百家乐官网倍投工具| 大发888dafa888| 百家乐官网号游戏机| 大发888公司赌场| 百家乐澳门百家乐| 大发888下载安全的| 半圆百家乐官网桌子| 蓝盾百家乐平台| 百家乐官网博娱乐网| 博彩网皇冠| 百家乐香港六合彩| 昌江| 澳门百家乐官网网站| LV百家乐官网客户端LV| 精河县| 蓝盾百家乐娱乐场开户注册| 百家乐官网双人操作分析仪| 京城娱乐城| 百家乐官网怎么玩会| 澳门百家乐| 回力百家乐的玩法技巧和规则| 百家乐官网平台| 百家乐官网技术交流群| bet365备用主页器| 在线百家乐下注| 开心8百家乐游戏| 玩百家乐官网澳门皇宫娱乐城| 亲朋棋牌下载| 百家乐发牌规| 百家乐园sun811| 百家乐开发公司| 哪家百家乐官网优惠最好且信誉不错 | 百家乐官网软件稳赚| 大发888游戏平台dafa888gw |