An IoT-Based Solution for Monitoring and Controlling Battery Energy Storage Systems at Residential and Commercial Levels
Abstract
:1. Introduction
1.1. Battery Energy Storage Systems in Renewabe Energy Communities: Related Works
1.2. IoT Solutions in Battery Energy Storage Monitoring and Control: Related Works
1.3. Motivation and Original Contribution of This Article
- The proposed IoT solution is the combination of a cloud infrastructure and a home gateway; this combination creates a direct communication channel between the cloud infrastructure and distributed battery storage systems;
- The proposed solution is independent of the cloud infrastructures of distributed storage systems manufacturers;
- The home gateway has high interoperability requirements, as well as ease of installation and implementation, is compatible with a variety of storage systems from different manufacturers already on the market, and does not use closed communication protocols;
- The home gateway, installed at a residential or commercial levels, communicates directly via Wi-Fi with the battery storage system on condition that the manufacturer of the battery storage system grants the necessary authorization;
- When the manufacturer does not grant this authorization, the prototype of an auxiliary device—called SunSpec adapter—allows the home gateway to communicate with the battery storage system via the SunSpec protocol.
2. Proposed IoT Solution for Monitoring and Controlling Battery Storage Systems
- -
- e : the community manager must necessarily ask the storage system manufacturer for these values via the appropriate APIs (i.e., read request);
- -
- : to update the battery power, the community manager must necessarily ask the storage system manufacturer via the appropriate APIs of the manufacture to send the new value to the storage system (i.e., write request);
- -
- response time: assuming a multitude of prosumagers, the overall time to (a) receive current values, (b) perform the calculations, (c) send new values and (d) verify that the new values have been correctly implemented may not be compatible with the dynamics of the system under control.
2.1. The Cloud Infrastructure of the Proposed IoT Solution
- -
- Kubernetes: Google service for configuring and automating services, and managing workloads;
- -
- Kiki: sends the commands for charging/discharging the batteries to the home gateway that translates the commands and forwards them to the storage system;
- -
- EnergyFlow: receives the measurements sent by the storage systems through the home gateway;
- -
- Cloud Storage: service for archiving objects in Google Cloud;
- -
- TimescaleDB: open-source database server for time-series data, optimized for fast data entry and complex queries;
- -
- MySQL: open-source and well-known structured query language (SQL) relational database;
- -
- Conflet: manages basic configurations of all microservices.
- -
- MongoDB: noSql (non-relational) document-based database, particularly useful for the development of mobile applications;
- -
- Kubeflow: open source machine learning toolkit for Kubernetes for running machine learning algorithms;
- -
- Aurora/omoi: receives data from field devices that do not communicate with the home gateway, consists of a data warehouse (bigQuery) and REST API interfaces released on Kubernetes;
- -
- Mirai: runs a set of machine learning algorithms for forecasting end-user generation and demand;
- -
- Okane: provides the electricity markets prices (wholesale, spot, and ancillary service markets);
- -
- Merchant: performs an algorithm for calculating offers for the ancillary services electricity market;
- -
- Censor: runs a machine learning algorithm to calculate the level of reliability of a battery energy storage system using historical series (e.g., number of failures, number of disconnections, etc.);
- -
- Taiyo: collects historical weather data (e.g., irradiation, temperature);
- -
- Simu: runs an algorithm that creates load and generation profiles for prosumagers, useful for numerical simulations and tests;
- -
- Rieki: calculates revenues, costs and profits for a renewable energy community.
2.2. The Home Gateway
2.3. The Sun Spec Adapter
- Timestamp (Unix timestamp);
- Monitored device (meter or storage);
- Any details of the monitored device (meter consumption or meter production);
- Monitored quantity (voltage, current, apparent energy, active power, etc.);
- Type of monitored variable (absorbed or delivered);
- Four values (min, max, avg, last value).
3. Validation Tests
3.1. Test 1: Home Gateway and ABB React2
- {;
- “storage_id”: “000000001”;
- “CMDMode”: “charge”;
- “timeout”: 1800000;
- “percSetpoint”: 100;
- }.
- {;
- “timeout”: 1800000;
- “setpoint_percent”: 100;
- }.
- {;
- “consumption”: {;
- “powerActive”: {;
- “discharge”: 0;
- “charge”: 2949;
- “measure_unit”: “W”;
- }.
3.2. Test 2: Home Gateway, SunSpec Adapter and 4 kW-4 kWh SolarEdge Battery Storage
- {;
- “storage”: “ solardge “;
- “model”: “ Storedge 4”;
- “address”: [ SolaredgeIP];
- “crate “: {;
- “max”: 4000;
- };
- “ soc “: {;
- “mins”: 5;
- };
- }.
- {;
- “derId”: “90e8dcc3-c70d-4725-a348-01a33b5f0612”;
- “commandUri”: “ chargeStorage “;
- “startTime”: “2022-11-06T16:52:00.268Z”;
- “endTime”: “2022-11-06T17:00:00.724Z”;
- “priority”: “1”;
- “parameters”: {;
- “chargePowerPercent”: “35”;
- };
- }.
- {;
- “id”: “ca2d8cb3-12ab-45e0-9dde-54f12ab77848”;
- “derType”: “storage”;
- “derSerial”: “73170C77-0D-STORAGE”;
- “commandUri”: “chargeStorage”;
- “createdOn”: “2022-11-06T16:51:44.786Z”;
- “startTime”: “2022-11-06T16:52:00.268Z”;
- “endTime”: “2022-11-06T17:00:00.268Z”;
- “status”: “Delivered”;
- “statusMessage”: null;
- “statusTime”: “2022-11-06T16:51:44.883Z”;
- “parameters”: { “ chargePowerPercent “: “35” };
- }.
3.3. Test 3: Home Gateway, SunSpec Adapter and 3 kW-4 kWh Sonnen Battery Storage
- {;
- “storage”: “sonnen”;
- “model”: “Ecobatteries 8.2”;
- “address”: [;
- <SonneIP>;
- ];
- “crate”: {;
- “max”: 3000;
- };
- “soc”: {;
- “mins”: 5;
- };
- }.
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Ref. | SoC | Alert | HW | SW | Comm. | Battery Type | Type | Year |
---|---|---|---|---|---|---|---|---|
[53] | yes | Yes | Rpi | GR | TCP-IP | 5 kW-100 Ah | Jnl | 2022 |
[54] | Yes | No | IBM servers | Node red | MQTT | 2.5 Ah | Jnl | 2021 |
[55] | Yes | No | Rpi | GR | TCP/IP | 5 kW-100 Ah | Jnl | 2021 |
[56] | Yes | No | Rpi | - | TCP/IP | 12 V-26 Ah (Lead acid) | Cnf | 2018 |
[57] | Yes | No | Rpi | PHP | TCP/IP | 48 V-200 Ah | Cnf | 2017 |
[58] | No | No | Rpi | GR | MQTT | 192× (3.6 V-3350 mAh) | Cnf | 2021 |
[59] | No | Yes | Arduino | - | TCP/IP | 4× (3.6 V-3350 mAh) | Cnf | 2021 |
- | Yes | Yes | Rpi | GR | MQTT | 3 kW-12 kWh ABB 4 kW-4 Wh Sonnen 3 kW-4 Wh SolarEdge | Jnl | 2023 |
MQTT Topics | Description |
---|---|
/sunadp/configuration | The device receives the configuration of the storage system to check. |
/sunadp/command | The device receives commands to forward to the storage system. |
/sunadp/monitoring | The device sends monitoring data to the storage system at equal intervals. |
Syntax and Description | |
---|---|
Frequency | {“read”: “Frequency”} The frequency (in Hz), measured at the point of common coupling between the battery storage and the electric grid. |
Line-to-phase voltages | {“read”: “Phase voltage”} The line to phase voltages (in V). |
Line current | {“read”: “Line current”} The line current (in A). |
Active power | {“read”: “Active power”} The absorbed/delivered active power (in W). |
Reactive power | {“read”: “Reactive power”} The absorbed/delivered reactive power (in VAr). |
State of charge | {“read”: “State of charge”} The state of charge of batteries (in %). |
Syntax and Description | |
---|---|
Charge | {“write”: “charge”, “power”: 50, [%] “interval”: 60 [min]} The batteries charge at 50% of the rated power for 60 min |
Discharge | {“write”: “discharge”, “power”: 80, [%] “interval”: 60 [min]} The batteries discharge at 80% of the rated power for 60 min |
Set profile | {“write”: “profile”: “self-consumption”, “backup”: 20 [%]} The batteries operate according to a preset profile, e.g., maximize self-consumption, and the state of charge cannot be lower than 20%. |
Stop | {“write”: “stop”} The batteries stop charge/discharge and remain in standby mode. |
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Burgio, A.; Cimmino, D.; Nappo, A.; Smarrazzo, L.; Donatiello, G. An IoT-Based Solution for Monitoring and Controlling Battery Energy Storage Systems at Residential and Commercial Levels. Energies 2023, 16, 3140. https://doi.org/10.3390/en16073140
Burgio A, Cimmino D, Nappo A, Smarrazzo L, Donatiello G. An IoT-Based Solution for Monitoring and Controlling Battery Energy Storage Systems at Residential and Commercial Levels. Energies. 2023; 16(7):3140. https://doi.org/10.3390/en16073140
Chicago/Turabian StyleBurgio, Alessandro, Domenico Cimmino, Andrea Nappo, Luigi Smarrazzo, and Giuseppe Donatiello. 2023. "An IoT-Based Solution for Monitoring and Controlling Battery Energy Storage Systems at Residential and Commercial Levels" Energies 16, no. 7: 3140. https://doi.org/10.3390/en16073140
APA StyleBurgio, A., Cimmino, D., Nappo, A., Smarrazzo, L., & Donatiello, G. (2023). An IoT-Based Solution for Monitoring and Controlling Battery Energy Storage Systems at Residential and Commercial Levels. Energies, 16(7), 3140. https://doi.org/10.3390/en16073140