A Hybrid Technique for Smooth Handover in Wireless Networks
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Abstract
Mobile nodes (MNs) can access the internet through different wireless network interfaces
such as wireless fidelity (WiFi), worldwide interoperability for microwave access
(WiMAX), and cellular networks like long-term evolution (LTE), fifth-generation (5G)
networks, etc. During an ongoing session, if the mobile user moves out of the coverage
of one base station (BS) and enters into the coverage of another BS, then his continuous
connectivity is maintained using handover. The handover process ensures the seamless
switching of MNs among multiple networks without any service degradation. The handover
process consists of three phases: handover triggering, network selection, and handover
execution. Handover should be triggered at an appropriate time to provide a better quality
of experience (QoE) to the mobile customers as well as to avoid mobility-related problems
such as unnecessary handovers and handover ping-pongs. Moreover, the handover should
be performed with the best available network which can fulfill the requirements of both the
user and the system. In this thesis, handover triggering and network selection techniques
have been developed to enhance overall network performance. The research work presented
in this thesis is divided into four phases:
In the first phase, a hybrid predictive handover technique based on long short-term
memory (LSTM) and support vector machine (SVM) models has been proposed. A proactive
handover technique reduces the handover latency and signaling overhead by predicting
handover in advance. The selection of the best network with minimum handover latency
provides seamless connectivity to the users. LSTM is used to predict the parameters of
MNs such as location coordinates, speed, reference signal received power (RSRP), and
reference signal received quality (RSRQ) at the next time step based on their values at
previous time steps. The output of LSTM is passed as input to the SVM for the selection
of the most appropriate network. The performance of the proposed approach is verified on
the MIT human dynamics lab dataset on human behaviors and interactions using positional
coordinates and on the 5G dataset using location coordinates along with speed, RSRP, and
RSRQ of MNs. The experimental results revealed that the proposed approach has better
performance as compared to Naive Bayes and stacked-LSTM approaches in the case of
dataset1. The improvement in the validation and testing accuracy of the proposed method is
16% and 18.24%, respectively, as compared to the stacked-LSTM approach. The proposed
approach has outperformed the Naive Bayes approach on the whole dataset2 in terms of
validation and testing accuracy by 54.72% and 61.22% , respectively. In the second phase, a handover technique based on graph theory and matrix approach
(GTMA) and Euclidean distance has been proposed. The handover triggering is performed
by computing Euclidean distance among the values of various network parameters such
as delay, jitter, packet loss rate, throughput, and price of the current serving network and
the best alternative network selected by the network selection technique. If the Euclidean
distance is less than the threshold value, then the MN stays connected to the current serving
BS otherwise the handover is triggered and the handover request is sent by the MN to the
serving BS. GTMA is utilized for ranking the alternative networks and selecting the best
available network. GTMA does not explicitly compute the weights of the attributes. So,
by employing the GTMA technique, the problem of ranking abnormality is significantly
minimized as well as there is a reduction in the number of handovers. GTMA has reduced
the number of handovers up to 75.61%, 85.71%, and 66.67% as compared to the traditional
multi-attribute decision-making (MADM) methods such as analytical hierarchy process
(AHP), a hybrid technique based on AHP and technique for order preference by similarity
to the ideal solution (AHP-TOPSIS), and grey rational analysis (GRA), respectively. Using
Euclidean distance as a handover triggering technique has further reduced the number
of handovers in the case of GTMA and traditional MADM methods for conversational,
interactive, streaming, and background traffic types.
In the third phase, a key performance indicator (KPI) based technique has been proposed
to select the appropriate values of handover control parameters (HCPs) such as handover
margin (HOM) and time-to-trigger (TTT). In this technique, the network selection is
performed using GTMA. KPI is the weighted average of three performance indicators (PIs)
such as handover ratio (HR), handover ping-pong ratio (HPPR), and ranking abnormality
ratio (RAR). A dataset is created by computing KPI values corresponding to different values
of HOM, TTT, and MN speed in the case of background, conversational, interactive, and
streaming traffic types. The optimal values of HCPs are determined by finding the minimum
value of KPI corresponding to the different speeds of MNs varying from 10km/h to 120km/h
for each traffic type. The simulation results have revealed that GTMA with optimal values
of HCPs (GTMA-HCP) has improved the performance in comparison to AHP-HCP, AHPTOPSIS-
HCP, and AHP-MOORA-HCP up to 7.76%, 13.48%, 9.96%, and 5.81% in the case
of background, conversational, and interactive, and streaming traffic types, respectively.
In the fourth phase, the impact of inter-next generation node B (inter-gNB) distance
on end-user applications has been analyzed. It has been found that the packet loss,
delay, and jitter are directly proportional to the inter-gNB distance whereas throughput
is inversely proportional to the inter-gNB distance. An HCP optimization technique has
also been proposed based on teacher-learner-based optimization (TLBO) and multi-armed
bandit (MAB) framework. In this technique, firstly a dataset of dimensions 3000 ×11
is created using the standalone architecture of the fifth-generation (5G) new radio (NR)
library of NetSim. In this dataset, 3000 is the combination of 10 user equipment (UEs) × 10 values of speed × 5 values of HOM × 6 values of TTT. During pre-processing, a new
column packet loss is created by subtracting packets received from packets generated. Thus,
four columns such as packets generated, packets received, payload generated, and payload
received are dropped from the dataset. After pre-processing the dataset, the dimensions of
the final dataset are 3000×8 (Speed, HOM, TTT, Destination ID, Packet Loss, Throughput,
Delay, and Jitter). Secondly, the weights of the different network parameters such as packet
loss, throughput, delay, and jitter are calculated using TLBO. Finally, MAB is used to
select the optimal values of HOM and TTT by taking into consideration the speed of the
UEs. The performance of the proposed approach is verified by creating three different
network scenarios consisting of 30 UEs moving at different speeds. The simulation results
have revealed that the proposed approach has improved the overall network performance
as compared to different combinations of HOM and TTT namely, HCP1 (HOM=0dB and
TTT=40ms), HCP2 (HOM=3dB and TTT=80ms), and Maxspeed approach, respectively in
case of scenario-I, II and III.
In this thesis, new handover strategies have been proposed to enhance the network
performance. The results of the proposed techniques, including the predictive handover
method, MADM-based approaches, and the simulation-based MAB technique, have shown
that these methods are efficient and outperform the existing techniques. The effectiveness
of the proposed approaches may offer valuable insights for addressing the challenges of
handover management in wireless networks.
