A Neural Radiance Field-Based Architecture for Intelligent Multilayered
View Synthesis
- URL: http://arxiv.org/abs/2311.01842v1
- Date: Fri, 3 Nov 2023 11:05:51 GMT
- Title: A Neural Radiance Field-Based Architecture for Intelligent Multilayered
View Synthesis
- Authors: D. Dhinakaran, S. M. Udhaya Sankar, G. Elumalai, N. Jagadish kumar
- Abstract summary: A mobile ad hoc network (MANET) is made up of a sizable and reasonably dense community of mobile nodes.
Finding the best packet routing from across infrastructure is the major issue.
This study suggests the Optimized Route Selection via Red Imported Fire Ants (RIFA) Strategy as a way to improve on-demand source routing systems.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: A mobile ad hoc network is made up of a number of wireless portable nodes
that spontaneously come together en route for establish a transitory network
with no need for any central management. A mobile ad hoc network (MANET) is
made up of a sizable and reasonably dense community of mobile nodes that travel
across any terrain and rely solely on wireless interfaces for communication,
not on any well before centralized management. Furthermore, routing be supposed
to offer a method for instantly delivering data across a network between any
two nodes. Finding the best packet routing from across infrastructure is the
major issue, though. The proposed protocol's major goal is to identify the
least-expensive nominal capacity acquisition that assures the transportation of
realistic transport that ensures its durability in the event of any node
failure. This study suggests the Optimized Route Selection via Red Imported
Fire Ants (RIFA) Strategy as a way to improve on-demand source routing systems.
Predicting Route Failure and energy Utilization is used to pick the path during
the routing phase. Proposed work assess the results of the comparisons based on
performance parameters like as energy usage, packet delivery rate (PDR), and
end-to-end (E2E) delay. The outcome demonstrates that the proposed strategy is
preferable and increases network lifetime while lowering node energy
consumption and typical E2E delay under the majority of network performance
measures and factors.
Related papers
- A Novel Reinforcement Learning Routing Algorithm for Congestion Control
in Complex Networks [0.0]
This article introduces a routing algorithm leveraging reinforcement learning to address two primary objectives: congestion control and optimizing path length based on the shortest path algorithm.
Notably, the proposed method proves effective not only in Barab'asi-Albert scale-free networks but also in other network models such as Watts-Strogatz (small-world) and Erd"os-R'enyi (random network)
arXiv Detail & Related papers (2023-12-30T18:21:13Z) - Multiagent Reinforcement Learning with an Attention Mechanism for
Improving Energy Efficiency in LoRa Networks [52.96907334080273]
As the network scale increases, the energy efficiency of LoRa networks decreases sharply due to severe packet collisions.
We propose a transmission parameter allocation algorithm based on multiagent reinforcement learning (MALoRa)
Simulation results demonstrate that MALoRa significantly improves the system EE compared with baseline algorithms.
arXiv Detail & Related papers (2023-09-16T11:37:23Z) - An Intelligent SDWN Routing Algorithm Based on Network Situational
Awareness and Deep Reinforcement Learning [4.085916808788356]
This article introduces an intelligent routing algorithm (DRL-PPONSA) based on deep reinforcement learning with network situational awareness.
Experimental results show that DRL-PPONSA outperforms traditional routing methods in network throughput, delay, packet loss rate, and wireless node distance.
arXiv Detail & Related papers (2023-05-12T14:18:09Z) - Energy Efficient Routing For Underwater Acoustic Sensor Network Using
Genetic Algorithm [0.0]
In underwater acoustic sensor networks (UWASN), energy-reliable data transmission is a challenging task.
We propose a genetic algorithm-based optimization method for improving the energy efficiency of data transmission in the routing path.
arXiv Detail & Related papers (2022-04-25T18:27:36Z) - Deep Reinforcement Learning Aided Packet-Routing For Aeronautical Ad-Hoc
Networks Formed by Passenger Planes [99.54065757867554]
We invoke deep reinforcement learning for routing in AANETs aiming at minimizing the end-to-end (E2E) delay.
A deep Q-network (DQN) is conceived for capturing the relationship between the optimal routing decision and the local geographic information observed by the forwarding node.
We further exploit the knowledge concerning the system's dynamics by using a deep value network (DVN) conceived with a feedback mechanism.
arXiv Detail & Related papers (2021-10-28T14:18:56Z) - Deep Learning Aided Packet Routing in Aeronautical Ad-Hoc Networks
Relying on Real Flight Data: From Single-Objective to Near-Pareto
Multi-Objective Optimization [79.96177511319713]
We invoke deep learning (DL) to assist routing in aeronautical ad-hoc networks (AANETs)
A deep neural network (DNN) is conceived for mapping the local geographic information observed by the forwarding node into the information required for determining the optimal next hop.
We extend the DL-aided routing algorithm to a multi-objective scenario, where we aim for simultaneously minimizing the delay, maximizing the path capacity, and maximizing the path lifetime.
arXiv Detail & Related papers (2021-10-28T14:18:22Z) - Packet Routing with Graph Attention Multi-agent Reinforcement Learning [4.78921052969006]
We develop a model-free and data-driven routing strategy by leveraging reinforcement learning (RL)
Considering the graph nature of the network topology, we design a multi-agent RL framework in combination with Graph Neural Network (GNN)
arXiv Detail & Related papers (2021-07-28T06:20:34Z) - Optimal Power Allocation for Rate Splitting Communications with Deep
Reinforcement Learning [61.91604046990993]
This letter introduces a novel framework to optimize the power allocation for users in a Rate Splitting Multiple Access network.
In the network, messages intended for users are split into different parts that are a single common part and respective private parts.
arXiv Detail & Related papers (2021-07-01T06:32:49Z) - Purification and Entanglement Routing on Quantum Networks [55.41644538483948]
A quantum network equipped with imperfect channel fidelities and limited memory storage time can distribute entanglement between users.
We introduce effectives enabling fast path-finding algorithms for maximizing entanglement shared between two nodes on a quantum network.
arXiv Detail & Related papers (2020-11-23T19:00:01Z) - Anypath Routing Protocol Design via Q-Learning for Underwater Sensor
Networks [12.896530402853612]
This paper proposes a Q-learning-based localization-free anypath routing protocol for underwater sensor networks.
The Q-value is calculated by jointly considering the residual energy and depth information of sensor nodes.
A mathematical analysis is presented to analyze the performance of the proposed routing protocol.
arXiv Detail & Related papers (2020-02-22T04:28:00Z) - Wireless Power Control via Counterfactual Optimization of Graph Neural
Networks [124.89036526192268]
We consider the problem of downlink power control in wireless networks, consisting of multiple transmitter-receiver pairs communicating over a single shared wireless medium.
To mitigate the interference among concurrent transmissions, we leverage the network topology to create a graph neural network architecture.
We then use an unsupervised primal-dual counterfactual optimization approach to learn optimal power allocation decisions.
arXiv Detail & Related papers (2020-02-17T07:54:39Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.