63 research outputs found
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Nano/Bio-Receiver Architectures and Detection Methods for Molecular Communications
Internet of Nano Things (IoNT) is an emerging technology, which aims at extending the connectivity into nanoscale and biological environments with collaborative networks of artificial nanomachines and biological entities integrated into the Internet. To enable the IoNT and its groundbreaking applications, such as real-time intrabody health monitoring, it is imperative to devise nanoscale communication techniques with low-complexity transceiver architectures. Bio-inspired molecular communications (MC), which uses molecules to transfer information, is the most promising technique to realise IoNT due to its inherent biocompatibility and reliability in physiologically-relevant environments.
Despite the substantial body of work concerning MC, the implications of an interface between MC channel and practical MC transceiver architectures are largely neglected, leading to a major gap between theory and practice. As the first step to remove this discrepancy, in this thesis, I develop a realistic analytical ICT model for microfluidic MC with surface-based receivers as a convection-diffusion-reaction system.
In the second part, I focus on biological MC receivers, which can be implemented in living cells using synthetic biology tools. In this direction, I theoretically develop low-complexity and reliable MC detection methods exploiting the various statistics of the stochastic ligand-receptor interactions at the membrane of biological MC receivers. The estimation and detection theoretical analysis of these detection methods demonstrate that even single type of receptors can provide sufficient statistics to overcome the receptor saturation problem, cope with the interference of non-cognate molecules, and simultaneously sense the concentration of multiple types of ligands. I also propose synthetic receptor designs for the transduction of decision statistics into a representation by concentration of intracellular molecules, and design chemical reaction networks performing decoding with intracellular reactions.
Finally, I fabricate a micro/nanoscale MC receiver based on graphene field-effect transistor biosensors and perform its ICT characterisation in a custom-designed microfluidic MC system with the information encoded into the concentration of DNAs. This experimental platform is the first practical demonstration of micro/nanoscale MC, and can serve as a testbed for developing realistic MC methods
Frequency-Domain Model of Microfluidic Molecular Communication Channels with Graphene BioFET-based Receivers
Molecular Communication (MC) is a bio-inspired communication paradigm
utilizing molecules for information transfer. Research on this unconventional
communication technique has recently started to transition from theoretical
investigations to practical testbed implementations, primarily harnessing
microfluidics and sensor technologies. Developing accurate models for
input-output relationships on these platforms, which mirror real-world
scenarios, is crucial for assessing modulation and detection techniques,
devising optimized MC methods, and understanding the impact of physical
parameters on performance. In this study, we consider a practical microfluidic
MC system equipped with a graphene field effect transistor biosensor
(bioFET)-based MC receiver as the model system, and develop an analytical
end-to-end frequency-domain model. The model provides practical insights into
the dispersion and distortion of received signals, thus potentially informing
the design of new frequency-domain MC techniques, such as modulation and
detection methods. The accuracy of the developed model is verified through
particle-based spatial stochastic simulations of pulse transmission in
microfluidic channels and ligand-receptor binding reactions on the receiver
surface
Modeling convection-diffusion-reaction systems for microfluidic molecular communications with surface-based receivers in Internet of Bio-Nano Things.
We consider a microfluidic molecular communication (MC) system, where the concentration-encoded molecular messages are transported via fluid flow-induced convection and diffusion, and detected by a surface-based MC receiver with ligand receptors placed at the bottom of the microfluidic channel. The overall system is a convection-diffusion-reaction system that can only be solved by numerical methods, e.g., finite element analysis (FEA). However, analytical models are key for the information and communication technology (ICT), as they enable an optimisation framework to develop advanced communication techniques, such as optimum detection methods and reliable transmission schemes. In this direction, we develop an analytical model to approximate the expected time course of bound receptor concentration, i.e., the received signal used to decode the transmitted messages. The model obviates the need for computationally expensive numerical methods by capturing the nonlinearities caused by laminar flow resulting in parabolic velocity profile, and finite number of ligand receptors leading to receiver saturation. The model also captures the effects of reactive surface depletion layer resulting from the mass transport limitations and moving reaction boundary originated from the passage of finite-duration molecular concentration pulse over the receiver surface. Based on the proposed model, we derive closed form analytical expressions that approximate the received pulse width, pulse delay and pulse amplitude, which can be used to optimize the system from an ICT perspective. We evaluate the accuracy of the proposed model by comparing model-based analytical results to the numerical results obtained by solving the exact system model with COMSOL Multiphysics
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Maximum Likelihood Detection With Ligand Receptors for Diffusion-Based Molecular Communications in Internet of Bio-Nano Things.
Molecular Communication (MC) is a bio-inspired communication technique that uses molecules as a method of information transfer among nanoscale devices. MC receiver is an essential component having profound impact on the communication system performance. However, the interaction of the receiver with information bearing molecules has been usually oversimplified in modeling the reception process and developing signal detection techniques. In this paper, we focus on the signal detection problem of MC receivers employing receptor molecules to infer the transmitted messages encoded into the concentration of molecules, i.e., ligands. Exploiting the observable characteristics of ligand-receptor binding reaction, we first introduce a Maximum Likelihood (ML) detection method based on instantaneous receptor occupation ratio, as aligned with the current MC literature. Then, we propose a novel ML detection technique, which exploits the amount of time the receptors stay unbound in an observation time window. A comprehensive analysis is carried out to compare the performance of the detectors in terms of bit error probability. In evaluating the detection performance, emphasis is given to the receptor saturation problem resulting from the accumulation of messenger molecules at the receiver as a consequence of intersymbol interference. The results reveal that detection based on receptor unbound time is quite reliable even in saturation, whereas the reliability of detection based on receptor occupation ratio substantially decreases as the receiver gets saturated. Finally, we also discuss the potential methods of implementing the detectors
Microfluidic Molecular Communication Transmitter Based on Hydrodynamic Gating
Molecular Communications (MC) is a bio-inspired paradigm for transmitting
information using chemical signals, which can enable novel applications at the
junction of biotechnology, nanotechnology, and information and communication
technologies. However, designing efficient and reliable MC systems poses
significant challenges due to the complex nature of the physical channel and
the limitations of the micro/nanoscale transmitter and receiver devices. In
this paper, we propose a practical microfluidic transmitter architecture for MC
based on hydrodynamic gating, a widely utilized technique for generating
chemical waveforms in microfluidic channels with high spatiotemporal
resolution. We develop an approximate analytical model that can capture the
fundamental characteristics of the generated molecular pulses, such as pulse
width, pulse amplitude, and pulse delay, as functions of main system
parameters, such as flow velocity and gating duration. We validate the accuracy
of our model by comparing it with finite element simulations using COMSOL
Multiphysics under various system settings. Our analytical model can enable the
optimization of microfluidic transmitters for MC applications in terms of
minimizing intersymbol interference and maximizing data transmission rate
Frequency-Domain Detection for Molecular Communication with Cross-Reactive Receptors
Molecular Communications (MC) is a bio-inspired communication paradigm that
uses molecules as information carriers, requiring unconventional transceivers
and modulation/detection techniques. Practical MC receivers (MC-Rxs) can be
implemented using field-effect transistor biosensor (bioFET) architectures,
where surface receptors reversibly react with ligands. The time-varying
concentration of ligand-bound receptors is translated into electrical signals
via field effect, which is used to decode the transmitted information. However,
ligand-receptor interactions do not provide an ideal molecular selectivity, as
similar ligand types, i.e., interferers, co-existing in the MC channel, can
interact with the same type of receptors. Overcoming this molecular cross-talk
in the time domain can be challenging, especially when Rx has no knowledge of
the interferer statistics or operates near saturation. Therefore, we propose a
frequency-domain detection (FDD) technique for bioFET-based MC-Rxs that
exploits the difference in binding reaction rates of different ligand types
reflected in the power spectrum of the ligand-receptor binding noise. We derive
the bit error probability (BEP) of the FDD technique and demonstrate its
effectiveness in decoding transmitted concentration signals under stochastic
molecular interference compared to a widely used time-domain detection (TDD)
technique. We then verified the analytical performance bounds of the FDD
through a particle-based spatial stochastic simulator simulating reactions on
the MC-Rx in microfluidic channels.Comment: Submitted to the IEEE for possible publication. arXiv admin note:
text overlap with arXiv:2301.0104
D-DSC: Decoding Delay-based Distributed Source Coding for Internet of Sensing Things.
Spatial correlation between densely deployed sensor nodes in a wireless sensor network (WSN) can be exploited to reduce the power consumption through a proper source coding mechanism such as distributed source coding (DSC). In this paper, we propose the Decoding Delay-based Distributed Source Coding (D-DSC) to improve the energy efficiency of the classical DSC by employing the decoding delay concept which enables the use of the maximum correlated portion of sensor samples during the event estimation. In D-DSC, network is partitioned into clusters, where the clusterheads communicate their uncompressed samples carrying the side information, and the cluster members send their compressed samples. Sink performs joint decoding of the compressed and uncompressed samples and then reconstructs the event signal using the decoded sensor readings. Based on the observed degree of the correlation among sensor samples, the sink dynamically updates and broadcasts the varying compression rates back to the sensor nodes. Simulation results for the performance evaluation reveal that D-DSC can achieve reliable and energy-efficient event communication and estimation for practical signal detection/estimation applications having massive number of sensors towards the realization of Internet of Sensing Things (IoST)
Universal transceivers: Opportunities and future directions for the internet of everything (IOE)
The Internet of Everything (IoE) is a recently introduced information and communication technology (ICT) framework promising for extending the human connectivity to the entire universe, which itself can be regarded as a natural IoE, an interconnected network of everything we perceive. The countless number of opportunities that can be enabled by IoE through a blend of heterogeneous ICT technologies across different scales and environments and a seamless interface with the natural IoE impose several fundamental challenges, such as interoperability, ubiquitous connectivity, energy efficiency, and miniaturization. The key to address these challenges is to advance our communication technology to match the multi-scale, multi-modal, and dynamic features of the natural IoE. To this end, we introduce a new communication device concept, namely the universal IoE transceiver, that encompasses transceiver architectures that are characterized by multi-modality in communication (with modalities such as molecular, RF/THz, optical and acoustic) and in energy harvesting (with modalities such as mechanical, solar, biochemical), modularity, tunability, and scalability. Focusing on these fundamental traits, we provide an overview of the opportunities that can be opened up by micro/nanoscale universal transceiver architectures towards realizing the IoE applications. We also discuss the most pressing challenges in implementing such transceivers and briefly review the open research directions. Our discussion is particularly focused on the opportunities and challenges pertaining to the IoE physical layer, which can enable the efficient and effective design of higher-level techniques. We believe that such universal transceivers can pave the way for seamless connection and communication with the universe at a deeper level and pioneer the construction of the forthcoming IoE landscape. Index Terms– Internet of Everything, Universal IoE Transceiver, Interoperability, Multi-modality, Hybrid Energy Harvesting, Molecular Communications, THz Communications, Graphene and related nanomaterials
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