1. Introduction
The continuous development of wireless communications, in addition to the miniaturization and reductions in cost of electronic devices have enabled the advance of Wireless Body Area Networks (WBANs). These networks are a subset of Wireless Sensor Networks (WSNs) and consist of low-power and lightweight sensor nodes placed along the human body to monitor its vital functions and other relevant data [
1]. WBANs are primarily applied to healthcare and the biomedical field, but they have potential for use in several other areas, such as enhancing the human experience, sport training or even entertainment. In this latter broader sense, this paradigm has been called the
Human Intranet [
2].
One of the main challenges faced by WBANs is energy efficiency given that sensor nodes are generally autonomous and, thus, battery-powered. Several approaches have been studied to reduce energy consumption in WBANs, in all layers of the communication stack. Perhaps the most researched ones are those at the data link layer, mainly consisting of medium access control (MAC) protocols [
3]. These strategies reduce the energy spending by decreasing the duty cycle of sensor nodes, thus, having their radio interfaces turned off for as long as possible, while also minimizing packet retransmissions.
At the physical layer, transmission power control (TPC) mechanisms have been widely introduced to the WBAN field, having been a classical research topic of WSNs for years [
4]. Very frequently, a WBAN has a star topology with one sink node in the middle section of the body and several sensor nodes placed along the limbs or at important body organs [
5]. With body movements and posture changes, wireless link conditions between the sensor nodes and the sink change rapidly, creating fading and shadowing effects caused by body parts interrupting the signal path [
6]. TPC protocols adapt the transmit power of sending nodes according to the received signal strength indicator (RSSI) recorded at receivers in order to respond to these changes [
7].
Along with reducing energy waste these schemes also have the desired consequence of increasing reliability in WBAN links. This is a particularly important challenge in WBANs given the highly dynamic and changing nature of its channels and links. In order to have reliable communications between the sensors and the sink, transmitters must use a high enough transmit power to ensure the RSSI at the desired receiver is above its sensitivity at all times. When this is not achieved, packets are lost and the application quality-of-service (QoS) is dramatically reduced [
8]. This is particularly worrying considering the critical nature of some WBAN applications such as prosthesis control, heart monitoring or medication dose management [
9].
Research studies generally use the packet reception rate (PRR) or packet delivery rate (PDR) to measure the reliability of WSNs and WBANs. In some cases, authors use the complement of these metrics, referring to the packet loss rate (PLR), packet error rate (PER), packet delivery failure rate (PDFR) or a number of alternative names [
7,
8,
10].
As can be inferred, the PRR is closely related to the RSSI measured at receiving nodes. When the RSSI is lower than the receiver sensitivity, packets are lost or some of their bits get corrupted. Some authors even go as far as discarding packets that actually arrive at their destination but with a RSSI lower than a pre-defined threshold [
5]. The correlation between the PRR and the RSSI has been widely demonstrated in the literature, both for WSNs and WBANs [
4,
11]. However, there are some scenarios where an increase in RSSI is not guaranteed to provide a higher PRR. This happens when interference between links is the main contributor to packet loss, as opposed to simple path loss [
7].
Given the specific features of WBANs, i.e., node mobility and radio propagation around the human body, several research studies have attempted to characterize or model their effect on the different wireless links of the network [
6,
12]. Postural changes modify the distance between nodes and affect the path loss due to body obstructions, affecting the RSSI and PRR [
13]. These body movements can rapidly turn a wireless link from being in line-of-sight (LOS) to non-line-of-sight (NLOS), giving WBAN channels a distinctive time-variant characteristic [
14].
This time-variance is very noticeable during some physical activities, such as walking or running, given the periodic characteristic of these movements. Thus, several research studies have exploited the periodicity of WBAN channels during physical activity, particularly adapting their MAC scheduling strategies [
5,
14] or their TPC mechanisms [
4,
15] to the gait cycle of the user.
However, several of these papers are based only on simulated conditions [
12]. Others only work with a single frequency band [
7,
15] or custom transceivers and antennas that can be impractical in real WBAN applications [
16]. Finally, several strategies make use of extra resources, such as accelerometers, that are not always readily available in WBAN nodes or, if available, incur in additional power consumption and overhead [
6].
A comprehensive theoretical model for WBAN communications would be a much-desired tool for researchers and algorithm designers in this field. However, an enormous number of factors—both internal and external to the network—affect WBAN communications and its channel conditions. Primarily, body movements and posture changes modify the signal paths, creating fading and shadowing effects due to body parts obstructing the line-of-sight between nodes. While free-space path loss has been sufficiently modeled and quantitated via the Friis equation for decades, the same cannot be said for the attenuation caused by the different layers and composition of body tissues. Different types of radio propagation occur in the inside layers of body parts, through their surface, and/or even in the immediately surrounding air: space waves, superficial waves, creeping waves, body coupled communication, etc. All of them are heavily influenced by the kind of antennas used, their positioning, and mainly by the body composition and structure of the WBAN subject. A theoretical model that takes all these aspects into account and quantifies them into a reliable and utilizable on-body path loss equation is impractical and possibly unrealistic.
Secondly, multipath transmission plays a huge role in WBAN communications, both in indoor and outdoor scenarios. The authors in [
17] go as far as to say that the strongest signal path in WBAN communications is the one that comes from ground reflections, rather than the one corresponding to the straight line between nodes (either in LOS or NLOS). Modeling all these multipath effects is also unfeasible and impractical, given the mobility aspects and the huge variety of scenarios and locations in which WBAN communications take place.
Finally, foreign interferers—either external devices or other nodes in the network—also affect WBAN communications and degrade their reliability. For instance, WBAN communications on the 2.4 GHz band, e.g., Bluetooth devices, can be heavily affected by the presence of Wi-Fi access points and devices in the vicinity. It would also be impractical to consider and integrate all these external interferences into a possible theoretical model for WBAN. In the same way, many common human activities are not solitary, but are rather shared among various individuals or at least occur in the presence of other surrounding people, e.g., going for a walk, working out, etc. If modeling the WBAN characteristics of one single isolated person is at best impractical, doing so for multiple people in motion becomes practically impossible.
In summary, given the amount and variety of factors impacting WBAN channel conditions, a comprehensive and applicable theoretical model is unfeasible in this context, and an empirical approach should be taken to analyze their characteristics in real scenarios and activities. In this work we have performed an extensive characterization of WBAN links using real hardware nodes with commercial wireless transceivers in the following ISM bands: 433 MHz, 868 MHz and 2.4 GHz. Our experiments have systematically and comprehensively measured the RSSI and PRR metrics in several scenarios, both static and dynamic, with different node placements along the body. These metrics are obtained from regular data packets exchanged by the network nodes, without the need for any additional hardware or extra resources. The paper focuses on the impact of body movements and posture changes on the performance of particular channels formed between two nodes of the WBAN, specifically in terms of reliability.
The main contribution of this work is an extensive dataset of real measurements of wireless link conditions obtained by different test subjects, spanning more than 6 h of recorded time. This dataset is accessible in the
Supplementary Materials section at the end of this article. The study allows us to establish a correspondence between these wireless link variations and the particular motions and postures that caused them. In particular, our experiments are able to detect the attenuation caused by body parts interrupting the signal path and increasing the NLOS portion of wireless links, empirically confirming the theoretical assumption derived from path loss equations. Additionally, this work provides researchers with an empirical performance benchmark of WBAN channels so that they can adapt their strategies and mechanisms to their characteristics. For instance, TPC protocols and MAC scheduling schemes can greatly benefit from a more detailed knowledge of the time-variance of WBAN channels in real scenarios and activities.
The rest of the article is structured as follows.
Section 2 explains the experiment conditions in detail, including a description of the hardware used and the different test scenarios.
Section 3 presents and discusses the results of these experiments. A broader more general discussion is presented in
Section 4. Finally, the conclusions drawn from this work are included in
Section 5.
4. Discussion
The performance of WBAN channels has been empirically characterized by means of two well-known metrics: RSSI and PRR. Three different bands—433 MHz, 868 MHz and 2.4 GHz—have been used to evaluate the effect of the frequency on the WBAN channel conditions. All experiments confirm the theoretical notions derived from path loss equations, with the lower frequencies performing better in terms of RSSI.
The tests presented in this work have also confirmed the correlation between the RSSI and PRR metrics for most scenarios and experimental conditions. A higher average RSSI results in a higher PRR for a given frequency and transmit power. However, as was mentioned in the introduction and stated in [
7], this is not the case when the packet loss is caused by interference rather than attenuation. In our experiments, this happens on the 2.4 GHz band in several environments, e.g., the sitting scenario, where interference and multipath effects result in a decreased PRR metric even for RSSI values above the receiver sensitivity. The 2.4 GHz band also seems to be much more negatively impacted by the presence of body parts on the signal path than the other two frequencies, as seen for the two different node placements in the standing and sitting scenarios.
Two dynamic physical activities—cycling and walking—were evaluated in order to study the periodic time-variant characteristics of their WBAN channels. The walking motion has been the subject of several studies in the field [
5,
14,
15]. However, to the best of our knowledge, this is the first time that cycling activity has been evaluated in the context of WBAN channel characterization. As predicted, the repetitive nature of these body motions is reflected on the RSSI variation with time of WBAN links. Our results have confirmed this, being able to extract periodic patterns for several test conditions and subjects. An important contribution of this work is introducing the frequency band and node placement as independent variables to test their impact on the RSSI periodicity patterns of the different activities. More importantly, the influence of the subject wearing the WBAN has been characterized. Our results show that the RSSI periodic pattern of the walking activity is extremely dependent on the particular subject. This should be taken into consideration by algorithms and strategies focused on exploiting these periodic patterns for energy efficiency and link reliability. It is mandatory that the particular periodic RSSI shape is extracted and characterized for each subject and activity, instead of assuming an a priori expected curve.
Our study of the cycling and walking activities also demonstrated that the periodicity of WBAN links can be obtained and characterized by simply extracting the RSSI metric, without any extra information. For instance, the walking cadence can be calculated just by averaging the distance between consecutive minima in the RSSI vs. time curve. This means that periodicity-exploiting algorithms or even activity-detection applications can be used without the need for extra hardware resources, such as accelerometers. Since the RSSI is already available in most commercial transceivers from the data packets already being sent, without any extra computing, this allows the development of low-resource algorithms and strategies for WBAN that require very few control packets and have almost no overhead.
All experiments have been performed with a custom hardware test platform with wireless commercial transceivers in three ISM bands. All the tests have also taken place in normal indoor and outdoor environments with regular conditions in terms of possible interfering equipment. This has been done in order to characterize the WBAN channels under their real use conditions, where potential algorithms and strategies are supposed to function. In the future, it would be interesting to characterize the performance of these same three bands but using different hardware or different antenna configurations, in order to further study and isolate the influence of the frequency.
5. Conclusions
An empirical evaluation of the performance of various WBAN links in several everyday scenarios and activities has been carried out in this work. Two static activities, standing and sitting, and two dynamic activities, cycling and walking, were characterized in terms of the RSSI and PRR metrics. During the experiments, the effects of several parameters and variables on these metrics were studied and characterized. In particular, we analyzed the impact of the frequency band, transmit power, node placement and, for the walking activity, the effect of the different cadence and gait cycle of three subjects.
The results of this work have empirically shown a correspondence—in terms of reliability—between wireless channel variations and particular motions and postures of different activities. Specifically, our experiments have characterized the negative effect of body tissue interrupting the signal path and increasing the NLOS part of wireless links, confirming the theoretical assumption derived from path loss equations.
A key contribution of this work is to provide researchers with an empirical performance benchmark of WBAN channels under different conditions, activities and scenarios. Future designers of WBANs can use this information to adapt their strategies and algorithms to these characteristics.