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  1. (Department of Electronics and Communication Engineering, SRM Institute of Science and Technology/Kattankulathur-Chennai, Tamilnadu-603203, India {rs3740, vijayakp}@srmist.edu.in)



Artificial intelligence, Diabetes mellitus, Deep learning, NIR

1. Introduction

Diabetes Mellitus(DM) is a chronic disease with a growing incidence worldwide.DM is collectively used for all types of diabetes. According to the diabetes atlas, one in 11 adults (20-79 years of age) have diabetes (463 million people); one in two adults with diabetes is undiagnosed(232 million people); one in five people with diabetes is above 65 years of age (136 million people). More than 1.1 million children and adolescents below 20 years have type 1 diabetes. Three out of four (79%) people are living in low middle-income countries, one in six live births (20 Million) are affected by hyperglycemia in pregnancy, while 84% of them have gestational diabetes, and 10% of global health is spent on diabetes [1].

Individuals with diabetes are always at a higher risk of surgical and nosocomial infections. The possibility of developing cancer is often found in Type-2 DM. Infections due to yeast, fungi, and bacteria are found more in people with DM [2]. It has become crucial to have real-time insight into the glucose levels in an individual. There is a strong need for a self-care management device for the daily monitoring of glucose.

This study evaluated different types of glucose monitoring and how non-invasive glucose monitoring is effective in daily life. Artificial intelligence-powered algorithms that contribute to the novel cause of non-invasive glucose monitoring are also discussed.

1.1 Classification of Diabetes Mellitus

Diabetes Mellitus is a collective term used for different types of diabetic conditions. Diabetes is classified into Type-I, Type-II, and Gestational diabetes.

1. Type-I Diabetes Mellitus:

Type-I diabetes is commonly found in people under the age of 35 years . Due to genetic influences and other environmental factors. It is also known as juvenile diabetes because it occurs during adolescence [3].

2. Type-II Diabetes Mellitus:

Type-II DM occurs as a result of the insufficient production and secretion of insulin. It is the major type of diabetes worldwide, and the incidence increases with age [3].

3. Gestational Diabetes Mellitus:

Gestational DM occurs during pregnancy. There are considerable fluctuations in glucose levels during this period, which sometimes leads to other complications, even after the end of the gestational period [3]. Although there are different types of DM, a medium to monitor glucose should be considered of the utmost importance. The following section examines different ways of glucose monitoring.

2. Glucose Monitoring

There are diagnostic criteria for monitoring glucose in DM. An individual is categorized as diabetic when the upper limit exceeds the described limits [3]:

Random plasma glucose ${\geq}$200mg/dL(11.1mmol/L);

Fasting plasma glucose${\geq}$126 mg/dL(7mmol/L);

Oral glucose tolerance test>200mg/dL(11.1 mmol/L).

The tests to analyze the blood glucose concentrations are generally taken from a pathology lab. Blood is drawn from the arm, and the glucose concentrations are determined from the blood. Furthermore, different types of monitoring glucose will be elaborated on and discussed.

2.1 Invasive, Non-invasive Monitoring, Minimally Invasive Glucose Monitoring

The glucose concentration is determined by harvesting blood from the hand(venepuncture method). The glucose concentrations are tested from the plasma or serum. This is a general method followed in hospitals for checking the diabetic condition in patients. Continuous blood withdrawal from a patient under ICU care or surgical procedure has a potential risk of a decrease in blood levels. Tests performed at the laboratories can sometimes show false results due to toxicity and cross-reactions due to various agents [4]. Due to the rise in diabetes for a decade, it has become vital to have a continuously monitored glucose device. Different methods for glucose monitoring will be discussed in the following subsection. The glucose concentration can be detected by invasive, minimally invasive, and non-invasive methods [5], as depicted in (Fig. 1). In the invasive method of detecting glucose, blood is drawn from the body. Apart from laboratory tests, which are not suited for continuous monitoring, there are many products in the market that allow continuous monitoring of glucose invasively. A glucometer is a device consisting of a lancet that helps to prick the finger for capillary blood. The glucose strip present reacts and detects the amount of glucose by oxidizing the amount of blood and producing a current proportional to the glucose level. Through the meter, an electron travels to the voltage to the current converter and produces a voltage proportional to the glucose. The drawback of this approach is that pricking the finger for every reading is quite painful, and the lancets and test strips are expensive [5].

There are minimally invasive (MI) techniques that need a minimum intervention of the inner body for the analysis. This could be the upper layers of skin, interstitial fluid, or tears that must be extracted to measure the glucose concentration [5] (Fig. 2) shows the different minimally invasive methods.

In the ultrasound approach of the MI method, interstitial fluid is sampled using ultrasound methods, and surface plasma resonance is detected. The refractive index is measured using microsystem technology, which gives the glucose concentration. The drawback of this approach is that ultrasound is susceptible to temperature [5,6]. The reverse iontophoresis approach of MI method depends on the circulation of a small electric current between the anode and cathode that is located on the surface of the skin. This approach allows access to the small interstitial fluid. A current is produced when sodium ions migrate by causing the convective flow of the fluid. This fluid also carries glucose molecules that reach the cathode. The glucose sensor at the cathode measures the glucose concentration by following the oxidation process (enzymatic method). The drawback of this method is that it is susceptible to sweat due to heat generation, and skin irritation can occur due to the passage of current. Quick changes in measuring the glucose current are not possible [5,7].

The minimally invasive method of sonophoresis measures glucose by extracting the interstitial fluid using an enzymatic method. This method uses low-frequency pressure waves to trigger glucose waves through the skin [5]. This method is used more commonly for drug delivery than for detecting glucose [8]. There may be erroneous readings due to interference from other compounds and pressure changes. This method could also produce incorrect readings due to temperature variations [5,8].

The Non-Invasive method of detecting glucose are divided into thermal, electric, and optical methods, as depicted in Fig. 3. The thermal method of detecting glucose uses the heat generation method. Photoacoustic spectroscopy(PAS), metabolic heat conformation(MHC), and thermal emission spectroscopy (TES) are the three types of thermal methods of detecting glucose. In electric methods of detecting glucose, the dielectric properties of glucose at low frequencies are detected. This is achieved using small amounts of electromagnetic radiation, current, and radiation. Bioimpedance spectroscopy, electro-magnetic sensing, and millimeter and microwave sensing are the three electric non-invasive approaches. The third methodology, optical methods, uses light that penetrates the skin or sample at a specific wavelength and detects glucose. The different types of noninvasive optical methods include terahertz time-domain spectroscopy, Raman spectroscopy, FIR spectroscopy(far-infrared spectroscopy), MIR spectroscopy(mid-infrared spectro-scopy), NIR spectroscopy(near-infrared spectroscopy), optical coherence tomography(OCT), and optical polarimetry [5].

Among the available market solutions and extensive research on invasive, minimally invasive, and non-invasive methods, extensive research is occurring in the non-invasive monitoring of glucose. The following drawbacks of invasive and minimally invasive techniques justify the need for a non-invasive methodology for detecting glucose [5,9]:

1. Anxiety is always triggered when pricking the finger and the pain associated with it. For continuous monitoring of glucose, there is a need to prick the finger continuously, which will not work.

2. For continuous monitoring of glucose, it is essential for a system to be small so that it can be carried anywhere.

3. Lancets and test strips are only used once. They are quite expensive.

4. There is a possibility of incorrect recordings caused by environmental changes.

5. Incorrect readings can occur if the testing strip is misplaced.

6. Erroneous readings are unavoidable when the finger is not cleaned when the test is taken.

7. In a minimally invasive method, removing the interstitial fluid is painful. This method is not recommended for the continuous monitoring of glucose.

8. In a minimally invasive method, sensors are inserted inside the human body and send important information to IoT devices. This method is associated with allergies and emergencies.

The above drawbacks justify the need for the non-invasive monitoring of glucose. Former sections have shown that non-invasive methods can solve the above-discussed challenges. The next section evaluates non-invasive methods for detecting glucose using different approaches.

Fig. 1. Glucose detection approaches.
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Fig. 2. Minimally invasive approach to detecting glucose.
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Fig. 3. Non-invasive approach of detecting glucose.
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Fig. 4. Categorization the ML algorithms.
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3. Non-invasive Glucose Monitoring

The World Health Organization (W.H.O) reported a higher number of deaths due to strokes, ischemia, and diseases, such as blindness, kidney failure, heart attacks, and lower limb amputation associated with diabetes [10]. There is a need to monitor glucose continuously for emergency conditions, before and after surgery, after release from ICU, at home, and to monitor the chronic condition itself. Few studies have worked on different non-invasive glucose monitoring methods, as shown in Fig. 3. Different approaches towards detecting glucose non-invasively are discussed further.

In the thermal method of detecting glucose, PAS uses short laser pulses that implement wavelengths absorbed by any molecule and produce microscopic localized heating. It is susceptible to noise and temperature changes [11-13]. By implementing NIR wavelengths, glucose is detected at 1540-1840nm [11] and 905 nm-1550nm [12]. By implementing MIR in an in-vivo method of detecting glucose from the skin, glucose molecules are detected at 1070,1105, and 1140cm$^{-1}$ [13]. This approach fails in the in vivo method because of the poor sensitivity of glucose detection.

In the thermal method of MHC, physiological parameters in the form of radiation, convection, and evaporation are measured using the metabolic oxidation of glucose [14,15].Glucose is detected from the amount of heat dissipated. Thermal and optical sensors are generally used to measure the physiological parameters, such as blood flow rate [14,15] of local tissue, blood oxygen [14], hemoglobin, and oxyhemoglobin concentrations [15]. The susceptibility to temperature and sweat are the main drawbacks of this approach. In the TES thermal method of detecting glucose, the heat emitted by the human body is in the form of energy, which can be detected at the FIR range of 8 ${\mathrm{\mu}}$m to 14${\mathrm{\mu}}$m.Glucose molecules in the body absorb this radiation and provide a detection mechanism for glucose. A handheld approach to detecting glucose was presented in [16], where the device was made from a filter spectrometer and the rmobile detector. While sensitive to temperature and heat, tissue density varies for each person, which may produce fault readings. Continuous glucose monitoring is not possible, which is another drawback of this approach.

In the electrical method of bioimpedance sensing, the permittivity and conductivity of the membrane in red blood cells produce dielectric impedance when current is applied. Bioimpedance strip electrodes are placed on the wrist to collect glucose measurements [17]. As this procedure may produce fluctuated data due to temperature sensitivity and physiological conditions that can affect the cell membrane, another approach for obtaining better accuracy was proposed [18], where MIR was also implemented. The glucose levels are detected at (5-10)${\mathrm{\mu}}$m at 100 Hz-30MHz. Sensitivity to water is another drawback for both approaches. In the electrical method of the microwave/ millimeter detection of glucose, radiation is present in a low energy per photon and less scattering in the tissue, which is advantageous for detecting glucose concentration much more accurately. A radar-driven microwave sensor is proposed in [19] to detect glycemia levels in patients with diabetes. The transmission of mm waves to detect glucose from two microstrip patch antennas is proposed in [20]. This method is used widely in communications that need detection through the exploitation of transmission and absorbance characteristics owing to the advantages of deeper penetration. This approach faces challenges when there is a variation in blood molecules, and physiological parameters, including breathing and temperature changes in the body.

There are many approaches to the optical method of measuring glucose molecules. Terahertz or FIR spectroscopy is based on the principle of absorption due to the vibration and rotation of weak and heavy bonds of atoms. This is achieved at wavelengths between 0.3THz (1000${\mathrm{\mu}}$m)and 30THz(10${\mathrm{\mu}}$m). The silicon Dowe prism for internal reflection was used in [21]. Glucose molecules were detected at 0.1-0.5THz, and similarly at 0.1-1.0THz [22]. When the blood glucose levels rise above the normal value, the amplitude and phase of the reflection coefficient change on human skin. If there is a strong absorption of water, identification of glucose molecules becomes difficult, which is a drawback of this approach. Raman spectroscopy is the principle of determining the scattered light from a monochromatic light. Miniaturized Raman spectroscopy was designed from the benchtop [23]. Glucose molecules were detected at 1125cm$^{-1}$.The collection time for glucose in this method was large, which is a drawback. In [24], ellipsoidal reflector-based spectrometry was proposed to detect glucose. Glucose was also detected at 980nm while not using reflector spectrometry to increase the accuracy. The interferences in blood with other molecules, such as hemoglobin, challenge this approach. Another disadvantage of this approach is the predictability of the wavelength. In the MIR optical method, glucose can be detected at 12-30THz. Owing to the longer wavelength, there is light scattering, but the water molecules cannot be absorbed in MIR ,resulting in less penetration. Hence lasers, such as quantum cascade lasers, were proposed by [25] with this approach. An external cavity QC laser between 8-10${\mathrm{\mu}}$m was focused on a hollow core fiber to deliver light. Glucose molecules are detected at 1080 cm$^{-1}$. Similarly, an ATR prism was used in [26]. Two FTIR spectrometers were used to detect the glucose. Three different wavenumbers, i.e, at 1050 cm$^{-1}$, 1070 cm$^{-1}$, and 1100 cm$^{-1}$, were chosen to detect glucose, but glucose peaks were obtained at 1036 cm$^{-1}$,1080 cm$^{-1}$, and 1100 cm$^{-1}$.The prototypes designed in [25,26] are expensive, which is a challenge in continuous glucose monitoring. The NIR approach to detecting glucose is a wider area of research for designing wearables [27,28]. Glucose can be detected between 780 nm to 2500nm.Using a PPG circuit and NIT amplifier, glucose is detected at on a single wavelength, 940nm in [27]. This method has the drawback of accuracy, which is much enhanced in [28], where glucose is detected in the range of 940nm by reflection spectroscopy and at 1300 nm by detection spectroscopy. Owing to the low wavelength, there is high light scattering, which is a challenge in NIR spectroscopy.

Optical coherence tomography is an imaging method of detecting optical characteristics in bio-tissues at micrometer resolutions. The method works on the principle of low-coherence interferometry and coherent radiation. The blood glucose level is obtained at the dermis layer of the skin using this approach. A Michelson interferometer, fiberoptic coupler, and broadband light source for illumination are gathered to detect glucose [29]. Glucose is detected by measuring the exponential slope of the light attenuation in the tissue. This approach is sensitive to skin thickness, temperature changes, and tissue homogeneity. Optical polarimetry works on the principle of chiral molecules that can rotate on the plane of polarized light. Glucose is a chiral molecule when it rotates in the polarization plane of a light beam by an angle ' ${\alpha}$' in a clockwise direction. The rotation is proportional to the concentration of glucose, optical path length, temperature, and wavelength of the laser beam. Glucose is detected between 635nm and 830 nm. This method is quite sensitive to interference, temperature, and motion changes because the optical rotation is minimal, and there is high scattering of light [30].

This section described the different approaches for monitoring glucose non-invasively. These approaches have been adapted to achieve sensitivity, coefficient of determination, and accuracy. Methods that provide the best accuracy and reliability for a system to work with the least error are vital in healthcare. The following section discusses the ML algorithms implemented for the different approaches to detecting glucose non-invasively.

4. Integration of IoT and Machine Learning for Monitoring Blood Glucose Non-invasively

AI is the discipline of making computers learn human intelligence. ML is a part of AI that helps train computers to learn.AI applications in healthcare ranging from detection, prediction, diagnosis, self-management, and personalization of disease therapy [31].

The three categories of ML algorithms are supervised learning, unsupervised learning, and reinforcement learning. In supervised learning, machines are trained using 'labeled' data. Classification and reinforcement learning are two categories of supervised learning. In unsupervised learning, machines are trained using 'unlabeled' data.

The two learning classifications of unsupervised learning are association learning and clustering learning. The third classification in ML is reinforcement learning which is implemented to make decisions. For detection, ML techniques from different studies are gathered and discussed further .For a non-invasive diabetic management system to thrive, understanding proper models in ML and choosing suitable algorithms for the nature of data is very important. The glucose levels in blood (non-invasively) were predicted, and many approaches of ML were explored.

Every ML algorithm follows the stages from collecting the data/datasets, data pre-processing, feature selection/ extraction, detection, and diagnosis of glucose monitoring [31].

4.1 Discussion on ML Techniques in Diagnosing Diabetes/Glucose Monitoring by Integrating IoT

Data collection/Datasets: In healthcare scenarios and applications, ML algorithms are first evaluated on publicly available datasets, such asthePIMA dataset and Kaggle. The public dataset on non-invasive monitoring of glucose is unavailable. This paper described the number of volunteers whose glucose levels were tested while implementing different ML approaches. The accuracy of the model depends on the quality and quantity of data [31].

1. Data Pre-Processing: Once the data is collected, the next step is to clean and process it. The data are processed using different techniques depending on the data gathered and the nature of the system [31]. The nature of data collected in [32, 33, 37, 38] is the PPG signal that comprises noise, artifacts, and baseline drifts. These are reduced using Digital wavelet transform(DWT), Wavelet decomposition, and Moving average(MA) [32]. The activity detection module in [33] extracted cleaner data without noise, whereas filters were implemented in [37,38] to remove unwanted observations. The pulse waveforms(PSW) data in [34,35] are processed polynomial fitting for removing baseline drift [34] and customized modeling to remove noise from raw optical signals. The spectroscopy data in [36, 41,42] were filtered using filters, such as row normalization, butter worth filter [36], and Kalman filter [42].

2. Feature Selection: The efficiency of an algorithm depends on the selection and extraction of features from a dataset. It helps in decreasing the complexity and time taken to process, decreasing overfitting while increasing accuracy [31]. The nature of data, e.g., image, text, texture, color, and shape, depends on the modality used in the application. The features selected are glucose molecules in optical NIR spectroscopy [27, 36, 37, 39-42]. The features extracted in NIR spectroscopy are the amplitude, difference of optical density, variance, skewness, and standard deviation [32]. The pulse waveform from arteries was collected; the distinct feature extracted was the amplitude [34]. By implementing optical granular computing, the low and high pressure, rising phase, and temperature are extracted from the pressure signal [35]. The blood flow rate is extracted from the PPG signal and blood oxygen saturation [38]. The above data, it can be inferred that for glucose molecules, the body signals are common features that may provide extraordinary results for research in the detection and diagnosis of th DM.

3. Detection and diagnosis of glucose monitoring: In this study, many researchers have explored and implemented various approaches of ML when surveying for the best papers while integrating the IoT and ML.

In applications of NIR spectroscopy of detecting glucose molecules, a deep neural network(DNN) with R=0.97,Mean absolute relative difference(mARD)= 4.86,Average error(AvgE)=4.88,Mean absolute deviation (MAD)=9.42,Relative mean square error(RMSE)=13.57 is achieved [27]. In another study implementing NIR spectroscopy, partial least square (PLS) was used ,where the average correlation coefficient Rp is 0.86 [32]. An artificial neural network (ANN) [36] is implemented. ANNs perform better with a Clarke-error grid=86% compared to bioimpedance spectroscopy and Alternating least square(ALS). The blood oxygen and blood flow rate is extracted from the PPG signal to analyze the glucose concentration non-invasively. The coefficient of determination (R$^{2}$=0.91), Clarke error grid =83% in class A and 17% in class B is obtained [38]. ANN is applied to build a model on glucose molecules extracted by breathing acetone. A low mean square error, Regression=1, is achieved. Neural network (NN) performs better than time and frequency, and single pulse analysis showed regression=1 and an error limit of ${\pm}$7.5% [39]. The DNN, ANN, and NN are deep neural networks with advantages in dealing with intra class differences and noisy information. NN consists of enormous numbers of neurons and is advantageous in DM, where the data are massive. A supervised ML Support vector machine (SVM) is implemented on the extracted glucose levels and amplitude. It helps classify the nonlinear data to linear data [34,41]. This alters the DM training data in a higher dimension. The root mean square error(RMSE), which depicts the difference between actual outcome and predictions, achieved RMSE=19.90mg/dL [41] when compared with the autoregressive integrated moving average (ARIMA), random forest (RF). The RF is the next commonly implemented ML algorithm for regression and classification problems. Compared to SVM, ridge linear regression (RLR), multilayer neuron perceptron network (MNPN) RF has a better coefficient of determination (R\-$^{2}$ =0.90) and a Clarke error grid of 87.7% [33]. The sweat sensor is designed to extract glucose levels from sweat. Linear regression(LR) and polynomial regression (PR)analysis is applied to building the model [37,40]. Correlation factors P=0.672,0.574, and 0.343 were achieved, whereas R$^{2}$=0.851 was achieved [37]. On a nonlinear dataset, PR was implemented, which produced a correlation coefficient of R$^{2}$=0.99 [40]. A customized physique-based fuzzy granular modeling(PbFG) achieved R$^{2}$=0.9 and Clarke(A+B)>90% when compared with PbFG SVR and PbFG ANN [35]. In a similar modality of detecting blood glucose non-invasively, SVM with the linear kernel is applied and showed a classification of 80.7% [34].

Different approaches toward the prediction and diagnosis of non-invasive methods of glucose monitoring were elaborated. The following section discusses the justification of the suitable methodology for detecting glucose from blood non-invasively.

Table 1. Literature review on modality and ML algorithms implemented for a non-invasive method of monitoring glucose.

Ref

Modality

ML

Algorithm

Applied

Performance Metrics

[27]

NIR spectroscopy

DNN

R=0.97

mARD=4.86

AvgE)=4.88

MAD)=9.42

(RMSE)=13.57

[32]

NIR spectroscopy

PLS

Rp=0.86

[33]

PPG waveform

RF

R=0.90

Clarke(A+B)=87.7%

[34]

Pulse waveforms

SVM-linear kernel

Classification of diabetic and pulse waveform=80.7%

[35]

Pulse waveforms

Fuzzy granular modeling

R$^{2}$=0.851

Clarke(A+B)>97.9%

[36]

Bioimpedance spectroscopy

ANN

Clarke-error grid=86%

[37]

Electrochemical method

LR

P=0.672,0.574,0.343

R$^{2}$=0.95

[38]

Single pulse analysis

ALS

R$^{2}$=0.91,

Clarke error grid =83% in class A and 17% in class B

[39]

Biosensor

ANN

Regression=1

Error limit=±7.5

[40]

Electrochemical impedance spectroscopy

PR

R$^{2}$=0.99

[41]

Time series forecasting

RF

RMSE=19.90mg/dL

5. Challenges and Future Works

Researchers have focused on developing desktop models and larger equipment by integrating IoT and ML to design a non-invasive model for detecting glucose. There is research potential in designing a portable model. A non-invasive glucose-monitoring device should provide real-time measurements irrespective of interference and noise. The data collected from the device must channel toward a cloud or any database to store the measurements, transfer them to healthcare providers, and generate alerts during an emergency. The predictions from the data can also make future doctor visits much easier to access and understandable and provide a better quality of treatment. The predictions should be modeled to help the doctors go through the patient's history, analyze the disease status with predictions, and provide better quality treatment. Wearables proposed in [27, 32, 37, 41, 42] detect glucose levels and make predictions but do not generate alerts or enhancements. Researchers can consider this as future work. Future work can be done on the ML algorithms applied in [32-35, 37, 40-42] that can be replicated with the different DL algorithms and improve the accuracy of the proposed models. Future work can also be done by considering more features, i.e., heartbeat, blood oxygen level, and blood pressure, in the developed model. Correlation analysis of the blood sugar with additional features can be taken as future work. A wearable that can detect blood glucose levels by providing accurate real-time predictions with built-in features of the heartbeat pattern, blood oxygen levels, and pulse rate can improve healthcare.

6. Conclusion

This paper presented the integration of IoT and ML in diagnosing non-invasiveglucose monitoring. This paper elaborated on the various approaches todetect glucose molecules from blood non-invasively. Furthermore, this paper presents comprehensive research activities on different ML algorithms that address the detection anddiagnosis of glucose issues non-invasively. On the other hand, much potential for designing portable, detection, predictions, alerts, and other enhancements with correlation analysis with additional features can be addressed in future work.

ACKNOWLEDGMENTS

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Author

Vijayakumar Ponnusamy
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Vijayakumar Ponnusamy received his Ph.D. from SRM IST in 2018. His area of research was Applied Machine Learning in Wireless Communication (cognitive radio). He completed his Masters in Applied Electronics from the College of Engineering, Guindy in 2006. In 2000, he received his B.E in Electronics and Communication Engineering from Madras University. He is currently working as a Professor in the ECE Department, SRM IST, Chennai, Tamil Nadu, India. He is a Certified “IoT specialist” and “Data scientist.“ He is also a recipient of the NI India Academic award for excellence in research (2015). His current research interests are Machine and Deep learning, IoT-based intelligent system design, Blockchain technology, and cognitive radio networks. He has authored or co-authored more than 100 International journals and more than 65 International, National conferences. He is a senior member of IEEE.

S. V. K. R. Rajeswari
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S. V. K. R. Rajeswari is a Research Scholar in SRMIST, Kattankulathur, Chennai-Tamil Nadu, India. She is pursuing her Ph.D. at the faculty of Electronics and Communication Engi-neering department. She received her M.Tech with Embedded Systems Technology as her specialization. and Bachelor of Technology from J.N.T.U.H, India. Her research interests include data science, machine learning algorithms, deep learning, artificial intelligence, IoT, and embedded systems.