Simulation Framework of Wireless Sensor Network (WSN) Using MATLAB/SIMULINK Software

A wireless sensor network consists of spatially distributed autonomous sensors to cooperatively monitor physical or environmental conditions, such as temperature, sound, vibration, pressure, motion or pollutants. The development of wireless sensor networks was motivated by military applications such as battlefield surveillance. They are now used in many industrial and civilian application areas, including industrial process monitoring and control, machine health monitoring, environment and habitat monitoring, healthcare applications, home automation, and traffic control [1-2].


Introduction
A wireless sensor network consists of spatially distributed autonomous sensors to cooperatively monitor physical or environmental conditions, such as temperature, sound, vibration, pressure, motion or pollutants. The development of wireless sensor networks was motivated by military applications such as battlefield surveillance. They are now used in many industrial and civilian application areas, including industrial process monitoring and control, machine health monitoring, environment and habitat monitoring, healthcare applications, home automation, and traffic control [1][2].
A smart sensor node is a combination of sensing, processing and communication technologies. Figure 1 shows the basic architectural components of a sensor node. The sensing unit senses the change of parameters, signal conditioning circuitry prepares the electrical signals to convert to the digital domain, the sensed analog signal is converted and is used as the input to the application algorithms or processing unit, the memory helps processing of tasks and the transceiver is used for communicating with other sensors or the base stations or sinks in WSN [3], see figure 1.
Sensors can monitor temperature, pressure, humidity, soil makeup, vehicular movement, noise levels, lighting conditions, the presence or absence of certain kinds of objects or substances, mechanical stress levels on attached objects, and other properties. Their mechanism may be seismic, magnetic, thermal, visual, infrared, acoustic, or radar. A smart sensor is also capable of self-identification and self-diagnosis. The mechanisms of smart sensors work in one of three ways: by a line of sight to the target (such as visual sensors), by proximity to target (such as seismic sensors), and by propagation like a wave with possible bending (such as acoustic sensors) [4,5].

Review of existing simulation environments for WSNs
In this section, a selection of existing simulation environments for WSNs is discussed. Basically, the investigated simulation environments can be divided into two major types: adaptive development and new development. The adaptive development covers simulation environments that already existed before the idea of WSNs emerged. These simulation environments were then extended to support wireless functionality and were then adapted for the use with WSNs. In contrast, new developments cover new simulators, which were created solely for simulating WSNs, considering sensor specific characteristics from the beginning. Both types have advantages and disadvantages, but basically it can be stated that while the evolutionary adaptation has some advantages in reusing well-tested ideas and source code as well as the bigger user and developer basis, the new developments have their advantages in focusing on the special characteristics and the functioning of sensor nodes.

a. GloMoSim/QualNet
GloMoSim [6] is a scalable simulation environment for wireless and wired network systems, which uses the parallel discrete-event simulation capability provided by Parsec [7], a cbased simulation language for sequential and parallel execution of discrete-event simulation models. Both, GloMoSim as well as Parsec, were developed by the Parallel Computing Lab. at UCLA. GloMoSim offers basic functionality to simulate wireless networks, even for ad hoc networks (e.g. AODV, DSR). However, the current version of GloMoSim does not offer any sensor network specific features in the default package so that without any further efforts no WSNs can be simulated meaningfully. In 2000 QualNet [6], [7], a commercial derivate of GloMoSim, was created and with GloMoSim 2.0, the last version of GloMoSim, was released under an academic license. From this point in time, no further improvements to GloMoSim were made, whereas the development of QualNet expedited. In October 2009, version 5.0 of QualNet was released including enhancements such as a new sensor network library for ZigBee, new network security library, parallel updates, new models (e.g. battery and energy), updates to current models as well as performance improvements. Furthermore, a new QT based GUI was added providing a scenario designer, a visualizer to view network scenarios (2D and 3D), a packet tracer for debugging, an analyzer for statistics and a file editor to edit the scenarios directly.

b. OPNET Modeler Wireless Suite
OPNET Modeler Wireless Suite [8]- [10] is a commercial modeling and simulation tool for various types of wireless networks. It is developed by developed by OPNET Technologies, Inc. and based on the well-known product OPNET Modeler. The simulation environment uses a fast discrete event simulation engine operating with a 32-bit/ 64-bit fully parallel simulation kernel, which is available for Windows and Linux. The OPNET Modeler provides an object-oriented modeling approach and a hierarchical modeling environment. Although there are no special routing protocols for wireless sensor network available, at least different propagation and m o d u l a t i o n t e c h n i q u e s a s w e l l a s a ZigBee (802.15.4) MAC layer are provided. Additional modules have to be customized or developed from the scratch. The simulations of wireless networks can be run as discrete event, hybrid or analytical, encompassing terrain, mobility and path-loss models. Due to the open interface external object files, libraries as well as other simulators can be integrated to the OPNET Modeler. Optional a System-in-the-Loop is available to interface simulations with live systems. Furthermore, the OPNET Modeler Wireless Suite provides grid computing support so that simulations can be executed in a distributed manner [11].

c. TOSSIM
TOSSIM (TinyOS mote simulator) [12]- [15] is a discrete event simulator for TinyOS sensor networks that is part of the official TinyOS package. TOSSIM takes advantage of the component based architecture of TinyOS by integrating it transparently by providing a new hardware resource abstraction layer that simulates the TinyOS network stack at the bit level for normal PCs. Due to this approach low-level protocols up to top-level applications can be simulated with TOSSIM. TOSSIM has an external communication system so that transmitted packets can be monitored and even new packets can be injected to network. Furthermore, the configuration of the debug options is fine grained providing the desired debug output at runtime. TOSSIM offers three network connectivity models: simple connectivity, static connectivity and space connectivity. The running simulations can be visualized and controlled by the Java-based GUI TinyViz [16].

d. OMNeT++
OMNeT++ [17]- [20] is an object-oriented discrete network simulation framework. The architecture is rather generic so that various problem domains can be simulated such as protocol modeling, validation of hardware architectures and modeling of wired and wireless communication networks. OMNeT++ is not a simulator, but it rather provides a framework and tools to write simulations. It is highly portable so that it can be run on the most common operating systems such as Windows, Linux and Mac OSX. There are a couple of simulation frameworks that enable OMNeT++ to be used for wireless sensor networks [21]. The most common of these frameworks are discussed in the following subsections.
Mobility Framework: The Mobility Framework [22]- [24], developed in the Telecommunication Networks Group (TKN) at the Technical University of Berlin, provides only basic support for mobile and wireless networks. It includes some basic layers such as MAC layers (Aloha, CSMA) and network layers (flooding) as well as some basic mobility functionality and some basic application layer.
MiXiM: MiXiM [25], [26] is a merger of several OMNeT++ frameworks to support mobile and wireless simulations. It uses the mobility support, the connection management, and the general structure from the Mobility Framework (MF); the radio propagation models from the CHannel SIMulator (ChSim); and the protocol library from the MAC simulator, the Positif frame-work [27], and the Mobility Framework.
Castalia: Castalia [28], [29] is a simulator for WSNs (WSN), body area networks (BAN) and generally networks of low-power embedded devices that is based on OMNeT++. It is developed at the National ICT Australia since 2006 and made public as open source under the Academic Public License in 2007.
INET Framework: The INET Framework [30], [31] is a framework for OMNeT++ that contains various implementations of common protocols, such as IPv4, IPv6, TCP, UDP etc., as well as several application models. The INET Framework is not specialized on mobile and wireless networks, but has some support for it.
NesCT: NesCT [32] is not a real framework, but rather a translator from the programming language NesC to C++ classes for OMNet++.

e. NS-2
NS (the Network Simulator) [33], [34] is an object-oriented discrete event simulator targeting at networking research. NS-2 is written in C++ and OTcl, an object-oriented version of Tcl. A huge amount of contributed protocol source codes can be found on the website http://nsnam.isi.edu/nsnam/index.php/Contributed Code. among them there are also some for WSNs interesting wireless protocols such as different variations of 802.11, 802.16, IR-UWB, BlueTooth and 802.15.4. Despite the great number of contributing researchers the support for wireless sensor network specific protocols is rather low. As special wireless sensor network framework the Mannasim Framework [36] should be highlighted that provides sensor network specific protocols such as LEACH and Directed Diffusion. Also the extension NS2-MIUN [37] provides some wireless sensor network specific contributions with the focus on intrusion detection. SensorSim: SensorSim [38]- [40] is a simulation framework for modeling sensor networks that built up on NS-2. It provides additional features for modeling sensor networks such as sensor channel models, power models (battery and radio), lightweight protocol stacks for wireless micro-sensors, scenario generation and hybrid simulation.

f. Avrora
Avrora [41]- [43] is a set of simulation and analysis tools for programs written for AVR micro-controllers. It has support for different sensor platforms, such as Mica2 and MicaZ, allowing wireless network simulation, dynamic instrumentation and static analysis. Since 2004, Avrora is developed in a research project of the UCLA compiler group. The special characteristic of Avrora is that it operates on the instruction-level, i.e. actual microcontroller programs can be run in the simulator, instead of just simulating software models.

g. J-Sim
J-Sim [44]- [46] is a component-based compositional simulation environment based on the autonomous component architecture (ACA). The basic entities of ACA are components, which communicated with each other by sending and receiving data using their ports. Application specific models can be defined by sub-classing the specified classes of the WSN simulation framework and adapting them to the desired behavior. At the moment, 802.11 is used as MAC Layer and AODV is provided as routing protocol.

h. ATEMU
ATEMU [47], [48] is one of the first instruction-level software emulators for AVR based systems. Additionally peripheral devices of the MICA2 sensor node platform such as radio is supported. Although at the moment only the MICA2 hardware is supported, ATEMU can be easily extended to support other sensor node platforms. Although ATEMU is the most accurate instruction-level emulator for wireless sensor network research, it lacks from simulation speed, being 30 times slower than TOSSIM, for example.

i. EmStar
EmStar [49]- [51] is an environment for WSNs built from Linux-class devices, so called micro servers. In comparison to motes, micro servers are much less constrained in computational power and data storage size so that they can handle more complex tasks such as image and audio processing. EmStar consists of simulation and emulation tools, which utilize a modular, but not strictly layered, architecture. EmStar provides different simulation modes: a pure simulation mode, an emulation mode, a real mode and a hybrid mode. EmStar provides various services that are used and combined to provide network functionality for wireless embedded systems. This includes link drivers for the lowest-layer interfaces to network resources, pass-through modules that implement various types of filter and passive processing, and routing modules such as Flooding, DSR, Sink, StateSync and Centroute.

SENS [52]
, [53] is an application-oriented simulator for WSNs. It has a modular, layered architecture so that components for applications, network communication and the physical environment can be easily interchanged and extended. Due to different component implementations, which varies in the degree of realism, application-specific environments can be created and simulated. Due to the chosen approach, SENS enables application portability because the same source code can be run with in a simulation or deployed on actual sensor nodes.

k. SENSE
SENSE (Sensor Network Simulator and Emulator) [54], [55] is a simulator for WSNs that is based on a novel component-oriented simulation methodology, which promotes extensibility and reusability. At the same time, the simulation efficiency and the scalability was considered. In the component repository of SENSE there are already different components available from the application to the physical layer including IEEE 802.11, AODV, DSR, SSR, SHR as well as Battery Models and a Power Model. At the moment, there does not seem to be any further tools included in SENSE so that, for example, a visualization tool to analyze the network behavior graphically is missing.

l. Shawn
Shawn [56]- [58] is customizable sensor network simulator based on an algorithmic approach. The primary design goals of Shawn are: simulate the effect caused by a phenomenon, scalability and support for extremely large networks and free choice of the implementation model. Models are the interfaces that are used by Shawn to control the simulation without knowing the exact implementation. Each implementation of a model specifies the actual behavior. Currently there are several implementations for the transmission model provided such as Pure CSMA & CSMA/CA, (Slotted) Aloha, Random Drop etc. Additionally to the three core models, there are several other models provided by Shawn for random variables, distance estimation and mobility. The simulation environment provides a sort of virtual world in which the different parts of the simulation are located. The simulated nodes are located in a single world instance and the nodes themselves are containers for processors. The application logic is implemented as instances of processors.
In this chapter, Simulink MATLAB was adopted to be the simulation tool of wireless sensor network (WSN). The main advantage of the suggested method is to determine the effect of the different channel parameters (i.e., Signal to Noise ratio, Attenuation and Interference) on the system behavior.

The proposed WSN simulation methodology
The environment in which we build our simulation model was MATLAB. The name MATLAB stands for matrix laboratory. MATLAB, developed by MathWorks Inc., is a software package for high performance numerical computation and visualization. The combination of analysis capabilities, flexibility, reliability, and powerful graphics makes MATLAB the premier software package for scientific researchers. MATLAB provides an interactive environment with hundreds of reliable and accurate built-in mathematical functions. These functions provide solutions to a broad range of mathematical problems including matrix algebra, complex arithmetic, linear systems, differential equations, signal processing, optimization, nonlinear systems, and many other types of scientific computations. The most important feature of MATLAB is its programming capability, which is very easy to learn and to use, and which allows user-developed functions. It also allows access to Fortran algorithms and C codes by means of external interfaces. There are several optional toolboxes written for special applications such as signal processing, control systems design, system identification, statistics, neural networks, fuzzy logic, symbolic computations, and others. MATLAB has been enhanced by the very powerful Simulink program [59].
Simulink is a software package for modeling, simulating, and analyzing dynamical systems. It supports linear and nonlinear systems, modeled in continuous time, sampled time, or a hybrid of the two. Systems can also be multi-rate, i.e., have different parts that are sampled or updated at different rates. For modeling, Simulink provides a graphical user interface (GUI) for building models as block diagrams, using click-and-drag mouse operations. With this interface, you can draw the models just as you would with pencil and paper (or as most textbooks depict them). Simulink includes a comprehensive block library of sinks, sources, linear and nonlinear components, and connectors. You can also customize and create your own blocks Models are hierarchical. This approach provides insight into how a model is organized and how its parts interact. After you define a model, you can simulate it, using a choice of integration methods, either from the Simulink menus or by entering commands in MATLAB's command window. The menus are particularly convenient for interactive work, while the command-line approach is very useful for running a batch of simulations (for example, if you are doing Monte Carlo simulations or want to sweep a parameter across a range of values). Using scopes and other display blocks, you can see the simulation results while the simulation is running. In addition, you can change parameters and immediately see what happens, for "what if" exploration. The simulation results can be put in the MATLAB workspace for post processing and visualization. And because MATLAB and Simulink are integrated, you can simulate, analyze, and revise your models in either environment at any point. [59].

Simulating a simple WSN in Simulink MATLAB
In order to demonstrate the concepts of the suggested simulation methodology, a simple WSN model was built as shown in figure 2 [60]. This network consisted of three sensors (slaves) sending their measured data samples to a master node. In this chapter, MATLAB Simulink communication block set was used to build a complete WSN system. Simulation procedure includes building the hardware architecture of the transmitting nodes, modeling both the communication channel and the receiving master node architecture. Bluetooth was chosen to undertake the physical layer communication with respect to different channel parameters (i.e., Signal to Noise ratio, Attenuation and Interference). The simulation model was examined using different topologies under various conditions and numerous results were collected. The architecture of the system could be explained as follows:

The transmitter
This system was based on Bluetooth technology that is considered as the backbone of transmission operation. Bluetooth is a short-range radio link technology that operates in the 2.4 GHz Industrial, Scientific, and Medical (ISM) band [60]. In this system we modulated the signal using Gaussian frequency shift keying (GFSK) over a radio channel with maximum capacity of 1 Mbps. The transmitter consists of the following blocks:


Sensor signal stage: It is represented by a sensor to sense the physical signals such as temperature, pressure…etc, then transducing them into an electrical signal. In addition, this stage includes the A/D convertor which converts the signal from Analog to Digital using 256 quantization level.  Up-sampling to 64ksamples/s: Up-samples the input to a higher rate by inserting zeros between samples.  Payload FEC encode: Encodes the data to enable error correction(an FEC encoder may include a binary convolutional encoder followed by a puncturing device Encoder and modulator: The 366 data bits are transmitted at 1 Mbps and modulated using Gaussian frequency shift keying (GFSK). GFSK effectively transmits +150 kHz signal relative to the carrier for a 1bit, and a 150 kHz signal for a 0 bit. The carrier signal is generated in the Simulink model by a baseband MFSK block set to 79 symbols and a separation of 1MHz. If a hop frequency value 0 is input, a -39MHz complex sinusoid is generated. If a 1 is entered, a -38 MHz complex sinusoid is generated and so on. In the model, the hop sequences are generated by a simple random number generator, not using the actual method specified in the standard. The transmitter is turned off after 366 bits using a Gain block to multiply the frame with a mask of 36600 ones and 26500 zeros.

The medium which consists of the following blocks
 AWGN Channel: The AWGN Channel block adds white Gaussian noise to a real or complex input signal. When the input signal is real, this block adds real Gaussian noise and produces a real output signal. When the input signal is complex, this block adds complex Gaussian noise and produces a complex output signal.  Path Loss: This block reduces the amplitude of the input signal by an amount specified. The loss can be specified directly using the "Decibels" mode, or indirectly using the "Distance and Frequency" mode. The reciprocal of the loss is applied as a gain, e.g., a loss of +20 dB, which reduces the signal by a factor of 10 corresponds to a gain value of 0.1.  802.11b interferer: This block adds signals that have the same frequency of the data signal to make interference between the data signal and other signals( i.e. a Wireless Local Area Network (WLAN) transmission).  Multiport Switch: In order to simulate the multiple access and multiplexing functions of the channel, this block was used. It chooses between a number of inputs. The first input is called the control input, while the rest of the inputs are called data inputs. The value of the control input determines which data input is passed through to the output port.

The receiver consists of the following blocks:
 Hop Sequence Generator: same as mentioned earlier.


Demodulation and decoding: This block is used to extract the original information-bearing signal from a modulated carrier wave, and to recover the information contends in it.  Zero-Order Hold: This block samples and holds its input for the specified sample period. The block accepts one input and generates one output, both of which can be scalar or vector. If the input is a vector, all elements of the vector are held for the same sample period.  Un-buffer: This block un-buffers an Mi-by-N frame-based input into a 1-by-N samplebased output. That is, inputs are un-buffered row-wise so that each matrix row becomes an independent time-sample in the output. The rate at which the block receives inputs is generally less than the rate at which the block produces outputs.  Down-sampling to 8ksamples/s: This block down-samples the input to a lower rate by deleting the repeating samples.  Scope RX: It was used to display the received signal and compare it with the original signal to discover the system behavior.
As known, a piconet can includes up to seven slaves and one master. In this example three signals were sent from three sensors (slaves) to the receiving component (master) representing one piconet , the information obtained by the sensors are used to estimate the Bluetooth performance as well as to study the media effect. Noise and interference are added to the signals in order to simulate the channel effect and measure Bit Error Rate (BER) and Frame Error Rate (FER). The following figures shows the system performance under different working conditions.

More complex example
As known from Blutooth operation, each piconet consists of one master and seven slaves and each master of a specific piconet may acts as a slave for another piconet which means the ability to expand the network to respond to more than seven sensors.
In this example two piconets are connected, so that the first piconet consists of three sensors connected to the master, and the later is connected as a slave to the second piconet. The second piconet consists of two slaves and one master as shown in Figure 9 below:   From the above results, it is obvious that the behavior of the system was successfully described using the suggested simulation methodology. It is also important to mention that this simulation method provides the ability to change the different system parameters to create new environment and hence, new simulation scenarios. This new simulation methodology proves the ability of the Simulink MATLAB to be a useful and flexible approach to study the effect of different physical layer parameters on the performance of wireless sensor networks.

Conclusions
In this chapter, a new simulation methodology of wireless sensor networks (WSN) was presented. MATLAB/Simulink was used as the tool to build the simulation environment. The strength of this simulation method falls in the ability to study the effect of different physical layer parameters (channel noise and interference, Signal to noise ratio…etc.) on the system behavior. The other advantage of this method is its flexibility in building the end nodes and sensors. This simulation methodology could be used to build different WSN types and opens the doors to use the MATLAB in this new field.

Author details
Qutaiba I. Ali Mosul University, Computer Engineering Department, Iraq