Friday, November 15, 2019

Making Renewable Energy SMART using Internet of Things (IOT)

Making Renewable Energy SMART using Internet of Things (IOT) Manuj Darbar, Kripa Shankar Pathak, Rajesh Goel Abstract: The paper highlights the cooperative behaviour of Multi agent systems by combining various renewal energy sources and then feeding the power to the grid. The process uses 6LoWPAN protocol to communicate with each other and C-ARTAGOs interface control with Guarde properties to intelligently manage the demand and supply. Keywords: SMART Grids, Renewal Energy sources, IoT. 1.0 INTRODUCTION Renewal energy is inspired by natural resources for energy conversion. Till date natural resources which are exploited for conversion of energy are: Wind, Biomass and Solar Power with the upsurge in energy demand countries are switching to alternative energy sources. These alternative sources could be Wind, Biomass or Solar Energy. Denmark tops the list with a very high penetration of renewal energy producing nearly 20% of total electricity demand. There is a paradigm shift from traditional method of generating power to renewal energy systems. There are two broad areas of research in renewal energy: Energy Transition, Energy Storage. Energy transition deals with conversion of natural energy into some form (Generally Electrical, Energy storage refers to store the energy generated by Natural resource generally solar cells uphill now manufacturers are using Conventional method of installing these energy sources, with the development of Internet of things the objects are made SMART. They can adjust output according to environment making them adaptive[2,3]. Unlike conventional internet, IOT supportive device usage with a very low bandwidth moreover the transmission is also inter sensor the novelty in this research area is to derive maximum efficiency from the entire setup. Each of the device will have an embedded chip sensor grid and communication link of all the connectivity nodes which are finally converted to cloud (P-cloud) for processing. For instance let up take the case of wind turbine, is case of any dynamic change in the operation of one turbine it is to be communicated to the cloud and all the turbines in li ne with turbine automatically adjust themselves, a self healing Immunization is injected which tunes the particular turbine in line with the other turbines. To manage the coherency between generation and storage battery signals and other parameters are sent to cloud for processing accordingly an adjustment/find turn of signal is generated to maintain the rhythm. Nowadays a new operating system like Windows and Linux has been developed specially catering to the needs of Internet of Things (IOT) named Contiki. Similarly we can apply for solar cell where a cell submits its health report on P-cloud on regular intervals. Some of the embedded systems supporting IOT are XBee, Rasberey pie and Cognitive Radio[8,9] Supporting Extended Environmental Markup Language, a type of XML document used in PACHUBED (suitable for public upload, download and display of data for Internet connected Networks. 2.0 MODEL DEVELOPMENT The paper highlights the development of a Toolkit for efficient management of Wind Energy and Solar Energy and feeding into the grid. In order to achieve synchronization between Wind grid, Solar Grid and existing grid we use the concept of Multi-agent system. These intelligent agents are integrated to a form self organizing net using swarming technique. Each of the wind mill and solar grid is connected by 6 LOWPAN Sensor devices. 6 LOWPAN is made up of Low-power wireless are networks. Which are IPV6 stub network. An Ad LOWPAN is not connected to the internet that operates without infrastructure. Figure 1 : Layer Architecture 6 LOWPAN In our framework we will be using Extended LOWPAN consisting of multiple edge routers. LOWPAN works on the principle of neighbor discovery (ND) LOWPAN needs participate in more than one LOWPAN at the same time also known as multi-homing. The protocol stack of 6 LOWPAN Protocol stack consists of Application, Transport, Network, Data Link and Physical. The Architecture of 6 LOWPAN consists of 1 Pv6 Internet connected to Remote sensor and an Edge Router which is connected with P2P link. This Edge Router consists of various Nodes of 6 LOWPAN (Figure 2) Figure 2: 6 LOWPAN Connection (Adopted from 6 LOWPAN – The wireless embedded Internet) Neighbor Discovery in LOWPAN includes a built in feature for dealing with Micro mobility. All the messages generated are being monitored and tracked by the Central Control Unit which feeds the power to the grid. Consider a scenario where grid of Wind Mills is installed, a grid of solar cells (figure 3). Figure 3: Multi-Agent System for Autonomic Control The above figure highlights the 6 LOWPAN sensor networks which is connected to each Wind Mill and Solar Panels. It is connected to the Control Centre by the help of an interface using 1Pv6 server and P2P connection by the Edge Router. The real time protocol for streaming the signals uses UDP which is an widely used for sensor data streams. The use Web services by the Control Centre helps in linking the current weather conditions (Sunny) or (windy) to Grid synchronizer which informs the Grid about the necessary invariability and power delivery in the Grid. In order to simulate the entire set-up we use the concept of C-ArtAgo developed by Alassendro Ricei et al. [1]. It is a platform for providing a general-purpose programming model. It works on two different aspects Agents and Artifacts. It is modeled in terms of set of artifacts programmed by MAS. Secondly the artifact collaborate each other using the combination of 6 LOWPAN communication[3,5,7] defined in FIPA standard protocols. The FIPA protocol[10,11] uses some of the concept of high-level interaction. It is categorised into three sections: (1) Basic Protocols (2) Network Protocol Contractual FIPA (3) Protocols FIPA Auctions. Since the Network protocol and Protocols FIPA Auctions are used when a electronic commerce has to be established. We will be using Basic Protocols of FIPA. The FIPA Basic Protocol allows an agent to request to another agent to perform certain action. It is combined with 6 LOWPAN Protocol to generate a standard set of communication link given in figure 4. Figure 4: AUML Representation of 6 LOWPAN FIPA Protocol quarry. This protocol allows an agent to request to another agent to perform certain action. The agent on receiving the request indicates whether it accepts or rejects the request. The FIPA protocol is further supported by conditional quarry protocol FIPA which allows an agent to request agent to perform an action when a certain condition is satisfied. The request protocol allows an agent to make an inquiry. The Agent on accepting the request can than acceptor refuse to provide information. (C-ArtAgo has a layerical structure with MAS acting as an middle layer. (figure 5) Figure 5 : Layerical Representation of MAS with CARTAGO Consider a scenario where we have to integrate Solar grid, Wind Grid and Normal Supply side grid by using guidance from the Web Service agent. The Web service agent we have used here are: The Weather services and Load Demand services provided by distribution agencies. In order to collaborate all the above entities we treat them as intelligent agents. In order to collaborate all the above agents we use (C-ARTAGOs usage interface control with Guarde properties. The operation control is either enabled or disabled. The Agent side side Use is used to trigger the Action, if USE + ENABLED then Action is Triggered otherwise the Action is stopped / Suspended. The sample program using Guard is described as: import alice.catrago.*; import java.until.*; public class Intelligent Agent extends Artifact { private Linked List sensor; void init (int max){ Sensors = new LinkedList define ( ) bsproperty (max-sensors, nmax); define Obs property (n_sensors,0); } @OPERATION (guard = n_sensors = active) void sense (device Id) {sensors.add (sensor); updatedObsProperty (n_IPv6, services, sensor.udp); } @GUARD boolean Grid Demand Not Full (set sensors) {intmax Agents = getobsProperty (max_agents). int value ( ) ; return agent size ( ) } } The above code deals with the problem of concurrent systems which requires effective coordination between produces agent (Solar Agent Windmill Agent) and SupplyAgent (The Supply grid). The use of Guard operation in Boolean option provides a necessary control giving the exact amount of Windmills / Solar panels currently active and based on Web service agent communication and the grid requirement the Boolean values change accordingly. 4.0 Conclusion: The paper introduces a framework for specifying the interaction between various types of intelligent agents. The coordination between the solar agent and Wind Mill agent is achieved by 6LOWPAN devices connected on IPv6 environment. The communication is achieved by Web Senor connected with Web services which guides about the environmental conditions and Peak Demand variations which is going to come in next couple of days. System uses FIPA protocol architecture for multi agent coordination. References: Book Section: [1] Alessandro Piunti, Michele A Viroli, Mirko A Omicini, Andrea Amal, Environment Programming in CArtAgO†, pp: 259-2188, Multi Agen Programming, 2009, Springer US. Research Papers: [2] Lehtoranta, O., Seppà ¤là ¤, J., Koivisto, H., and Koivo, H., â€Å"Adaptive District Heat Load Forecasting using Neural Networks†, in Proceedings of Third International Symposium on Soft Computing for Industry, Maui, USA, 2000. [3] M Darbari, VK Singh, R Asthana, â€Å"N-Dimensional Self Organizing Petrinets for Urban Traffic Modeling†, International Journal of Computer Science Issues (IJCSI) 7 (4), 37-40, 2010. [4] N Dhanda, M Darbari, NJ Ahuja, â€Å"Development of Multi Agent Activity Theory e-Learning (MATeL) Framework Focusing on Indian Scenario† , International Review on Computers Software 7 (4), 1624-1628, 2012. [5] M Darbari, VK Singh, R Asthana, S Prakash, â€Å"N-Dimensional Self Organizing Petrinets for Urban Traffic Modeling†, International Journal of Computer Science Issues (IJCSI) 7 (4), 37-40, 2010. [6] M Darbari, P Sahai, â€Å"Adaptive e-learning using Granulerised Agent Framework†, International Journal of Scientific and Engineering Research 5 (3), 167-171,2014. [7] Mà ¼ller, J.P., â€Å"A Cooperation Model for Autonomous Agents†, Intelligent Agents III, Springer, 1997. [8] Malone, T., and Crowston, K., â€Å"The interdisciplinary study of coordination†,  ACM Computing Surveys,V ol. 26(1), 1994. [9] Nwana, H.S., Lee, L., Jennings, N.R., â€Å"Co-ordination in software agents systems†, BT Technology Journal. Vol 14(4), 1996. [10] Shoham, Y., and Tennenholtz, M., â€Å"On the synthesis of useful social laws for artificial agent societies†, in Proceedings of the 10th National Conference on Artificial Intelligence, pp. 276-281, 1992. [11] Wooldridge, M., Jennings, N.J., and Kinny, D., â€Å"The Gaia Methodology for Agent-Oriented Analysis and Design†, Journal of Autonomous Agents and Multi-Agent Systems, Vol. 3(3) pp.285-312, 2000.

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