技术
- 功能应用 - 远程监控系统
- 网络与连接 - 网关
- 其他 - 能量采集
- 传感器 - 电表
适用行业
- 公用事业
适用功能
- 商业运营
用例
- 能源管理系统
客户
里昂市和格勒诺布尔市
关于客户
法国里昂和格勒诺布尔市 GreenLys 智能电网开发项目由里昂和格勒诺布尔组成,作为创新解决方案的实验平台,从能源生产到消费> 1000 个住宅客户> 40 个第三产业
挑战
标准化和展示全面运行的智能电网,以广泛部署经过验证的创新解决方案,并为以下方面提供基础:
• 面向产消者的新商业模式
• 法国电力系统采用最新技术创新的投资策略
• 促进当前网络向智能电网系统演进的过渡方案
• 实施关于最佳技术和经济选择的多学科研究结果
解决方案
对于房主
Wiser™ 系统按区域或类型(例如供暖、热水)监控和控制所有电气设备的能源使用 > StruxureWare™ 需求侧运营平台支持参与为优化能源消耗提供经济奖励的计划 > Wiser 系统连接到 StruxureWare需求侧运营平台支持参与智能电网计划 > 电动汽车代表一种灵活的储能来源,可在需要时重新注入电网
对于企业
基于云的服务和智能网关监控建筑负载、现场可再生能源生产、储能系统和 HVAC 系统
收集的数据
Energy Consumption Rate, Energy Production
运营影响
数量效益
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