Smart Distribution Boards (Smart DB), Non-Intrusive Load Monitoring (NILM) for Load Device Appliance Signature Identification and Smart Sockets for Grid Demand Management

Traditionally, the choices to balance the grid and meet its peaking power needs are by installing more spinning reserves or perform load shedding when it becomes too much. This problem becomes worse as more intermittent renewable energy resources are installed, forming a substantial amount of total capacity. Advancements in Energy Storage System (ESS) provides the utility new ways to balance the grid and to meet its peak demand by storing un-used off peak energy for peak usage. Large sized ESS—mega watt (MW) level—are installed by different utilities at their substations to provide the high speed grid stabilization to balance the grid to avoid installing more capacity or triggering any current load shedding schemes. However, such large sized ESS systems and their required inverters are costly to install, require much space and their efficacy could also be limited due to network fault current limits and impedances. In this paper, we propose a novel approach and trial for 3000+ homes in Singapore of achieving a large capacity of demand management by developing a smart distribution board (DB) in each home with the high speed metering sensors (>6 kHz sampling rate) and non-intrusive load monitoring (NILM) algorithm, that can assist home users to perform the load/appliance profile identification with daily usage patterns and allow targeted load interruption using the smart sockets/plugs provided. By allowing load shedding at device or appliance level, while knowing their usage profile and preferences, this can allow such an approach to become part of a new voluntary interruptible load management system (ILMS) that requires little user intervention, while minimizing disruption to them, allowing ease of mass participation and thus achieving the intended MW demand management capacities for the grid. This allows for a more cost effective way to better balance the grid without the need for generation capacity growth, large ESS investment while improving the way to perform load shedding without disruptions to entire districts. Simply, home users can now know and participate with the grid in interruptible load (IL) schemes to target specific home appliance, such as water heaters or air conditioning, allowing interruptions during certain times of the day, instead of the entire house, albeit with the right incentives. This allows utilities to achieve MW capacity load shedding with millions of appliances with their preferences, and most importantly, with minimal disruptions to their consumers quality of life. In our paper, we will also consider coupling a small sized Home Energy Storage System (HESS) to amplify the demand management capacity. The proposed approach does not require any infrastructure or wiring changes and is highly scalable. Simulation results demonstrate the effectiveness of the NILM algorithm and achieving high capacity grid demand management. This approach of taking user preferences for appliance level load shedding was developed from the results of a survey of 500 households that indicates >95% participation if they were able to control their choices, possibly allowing this design to be the most successful demand management program than any large ESS solution for the utility. The proposed system has the ability to operate in centralized as part of a larger Energy Management System (EMS) Supervisory Control And Data Acquisition (SCADA) that decide what to dispatch as well as in autonomous modes making it simpler to manage than any MW level large ESS setup. With the availability of high-speed sampling at the DB level, it can rely on EMS SCADA dispatch or when disconnected, rely on the decaying of the grid frequency measured at the metering point in the Smart DB. Our simulation results demonstrate the effectiveness of our proposed approach for fast grid balancing.

[1]  Howon Kim,et al.  Nonintrusive Load Monitoring Based on Advanced Deep Learning and Novel Signature , 2017, Comput. Intell. Neurosci..

[2]  Chau Yuen,et al.  Framework for minimum user participation rate determination to achieve specific demand response management objectives in residential smart grids , 2016 .

[3]  Aliza Che Amran,et al.  Automatic load shedding in power system , 2003, Proceedings. National Power Engineering Conference, 2003. PECon 2003..

[4]  H. Vincent Poor,et al.  Three-Party Energy Management With Distributed Energy Resources in Smart Grid , 2014, IEEE Transactions on Industrial Electronics.

[5]  Trong Nghia Le,et al.  Optimal Load Shedding Based on Frequency, Voltage Sensitivities and AHP Algorithm , 2014 .

[6]  Liuchen Chang,et al.  Review on distributed energy storage systems for utility applications , 2017 .

[7]  Pedro B. M. Martins Load Disaggregation of Industrial Machinery Power Consumption Monitoring Using Factorial Hidden Markov Models , 2018 .

[8]  Tommi S. Jaakkola,et al.  Approximate Inference in Additive Factorial HMMs with Application to Energy Disaggregation , 2012, AISTATS.

[9]  Alex Rogers,et al.  Non-Intrusive Load Monitoring Using Prior Models of General Appliance Types , 2012, AAAI.

[10]  Chau Yuen,et al.  Battery integrated solar photovoltaic energy management system for micro-grid , 2015, 2015 IEEE Innovative Smart Grid Technologies - Asia (ISGT ASIA).

[11]  Lawrence R. Rabiner,et al.  A tutorial on hidden Markov models and selected applications in speech recognition , 1989, Proc. IEEE.

[12]  Andreas Jossen,et al.  Lithium-Ion Battery Storage for the Grid—A Review of Stationary Battery Storage System Design Tailored for Applications in Modern Power Grids , 2017 .

[13]  Wayes Tushar,et al.  Smart Grid Testbed for Demand Focused Energy Management in End User Environments , 2016, IEEE Wireless Communications.

[14]  Christoph H. Glock,et al.  Using inventory models for sizing energy storage systems: An interdisciplinary approach , 2016 .

[15]  Junqi Liu,et al.  Adaptive load shedding based on combined frequency and voltage stability assessment using synchrophasor measurements , 2013, IEEE Transactions on Power Systems.

[16]  Mohammad Yusri Hassan,et al.  AN IMPROVED LOAD SHEDDING SCHEDULING STRATEGY FOR SOLVING POWER SUPPLY DEFISIT , 2016 .

[17]  V. Chuvychin,et al.  Smart load shedding system , 2012, 2012 3rd IEEE International Symposium on Power Electronics for Distributed Generation Systems (PEDG).

[18]  T. Logenthiran,et al.  Intelligent management of distributed storage elements in a smart grid , 2011, 2011 IEEE Ninth International Conference on Power Electronics and Drive Systems.

[19]  G. Stranne,et al.  Operational experience of load shedding and new requirements on frequency relays , 1997 .

[20]  Muhammad Ali Imran,et al.  Low-power appliance monitoring using Factorial Hidden Markov Models , 2013, 2013 IEEE Eighth International Conference on Intelligent Sensors, Sensor Networks and Information Processing.

[21]  Chao-Shun Chen,et al.  Protective relay setting of the tie line tripping and load shedding for the industrial power system , 1999, 1999 IEEE Industrial and Commercial Power Systems Technical Conference (Cat. No.99CH36371).

[22]  Seong Gon Choi,et al.  Distributed real-time stochastic optimization based ESS management strategy for residential customers , 2017, 2017 19th International Conference on Advanced Communication Technology (ICACT).