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Electronics

Electronics is an international, peer-reviewed, open access journal on the science of electronics and its applications published semimonthly online by MDPI.
The Polish Society of Applied Electromagnetics (PTZE) is affiliated with Electronics and their members receive a discount on article processing charges.
Quartile Ranking JCR - Q2 (Engineering, Electrical and Electronic)

All Articles (28,096)

Solid-state lighting, especially light-emitting diodes (LEDs), is revolutionizing indoor lighting due to its energy efficiency, long lifespan, low heat output, and enhanced color rendering. LEDs can quickly adjust light intensity, enabling the development of visible light communication (VLC) technology. However, the modulation bandwidth of phosphor-converted white LEDs commonly used for illumination is limited, potentially affecting the speed of the VLC links. This paper presents a receiver-side equalization technique to overcome bandwidth limitations in VLC links due to LEDs. The proposed approach utilizes a novel transimpedance amplifier with an embedded T-network shunt-feedback equalizer (TIA-TE) to introduce adjustable high-frequency peaking in the TIA’s frequency response. By incorporating this peaking, the system’s bandwidth is extended without sacrificing important performance parameters like gain, noise, or power dissipation. The TIA-TE is followed by a main amplifier and a standalone continuous-time linear equalizer (CTLE) for further signal conditioning, while a 50 Ω buffer interfaces the receiver with measurement equipment. Post-layout simulations in a 0.35 µm CMOS process validate the approach. Using a 4 pF photodiode, the system bandwidth was initially limited by the LED’s 3 MHz modulation bandwidth. The proposed TIA-TE extends the bandwidth to 8.4 GHz without sacrificing the gain or power dissipation. The subsequent CTLE further extends the bandwidth to 14 MHz. The receiver front end achieves a mid-band transimpedance of 110 dBΩ and an input-referred noise current of 7.2 nArms, while dissipating 2.48 mW (excluding the 50 Ω buffer). Simulated 28 Mb/s NRZ eye diagrams demonstrate the feasibility of the proposed TIA-TE architecture for LED-limited VLC links.

1 March 2026

Block diagram of a proposed VLC link.
  • Feature Paper
  • Article
  • Open Access

Explainable Firewall Penetration Testing Method Employing Machine Learning

  • Algimantas Venčkauskas,
  • Jevgenijus Toldinas and
  • Nerijus Morkevičius

Cyber adversaries are becoming more sophisticated, creating complex security challenges as digital services expand. The reliability of the firewall is of the utmost importance in the context of network security since it serves as the first line of protection. Penetration testing is an approach used to evaluate the reliability of a firewall and improve security by uncovering exploitable flaws. Frequently, penetration testing solutions are developed using machine learning, and it is of the utmost importance to explain the obtained results during the penetration testing. The emergence of explainable AI (XAI) addresses transparency in ML models, which is essential for informed cybersecurity decisions. Additionally, effective penetration testing reports are crucial for organizations, helping them comprehend and address vulnerabilities with tailored mitigation strategies. This study contributes to firewall security by developing an explainable penetration testing method, which includes two machine learning classification models: a binary model for detecting attacks and a multiclass model for identifying attack types with an explainability feature. This research introduces a novel explainability method that emphasizes significant features related to attack types based on multiclass predictions and proposes an approach using the extended System Security Assurance Ontology (SSAO) to clarify vulnerabilities and suggest alternative mitigation strategies. After evaluating numerous ML algorithms for the CIC-IDS2017 dataset, the Fine Tree model was considered to have the greatest performance. For the binary model, it achieved a validation accuracy of 99.7%, while for the multiclass model, it achieved a validation accuracy of 99.6%. Both models were used to test the firewall for vulnerabilities. Firewall penetration testing using the binary model achieves an accuracy of 82.1%, while the multiclass model achieves an accuracy of 78.7%.

1 March 2026

The process of firewall penetration testing using explainable firewall penetration testing engine.

LocalGaussStyle: A Method for Localized Style Transfer on 3D Gaussian Splatting

  • Jeongho Kim,
  • Byungsun Hwang and
  • Jinyoung Kim
  • + 4 authors

The recent development of 3D generative AI encompassing generation and editing technologies has been increasingly investigated to advance immersive applications. To enrich visual aesthetics, 3D stylization techniques focus on transferring artistic effects from reference style images to 3D scenes. However, existing 3D stylization techniques primarily focus on global style transfer, which can result in unwanted modifications to background regions and a lack of localized control. To address these limitations, we propose LocalGaussStyle, a novel approach for localized style transfer on scenes represented by 3D Gaussian splatting. The proposed pipeline consists of two phases: object localization and localized stylization. First, 2D instance segmentation masks are projected into a 3D scene to precisely localize target objects. Next, a boundary-aware optimization is designed to perform style transfer and mitigate style leakage caused by the spatial overlap of Gaussians. In addition, geometry-decoupled adaptive densification (GDAD) is employed to enhance the geometric resolution of Gaussians within the target object, thereby improving the representation capacity. The LocalGaussStyle facilitates high-fidelity style transfer that preserves the geometry and appearance of the non-target regions. In terms of style fidelity and background preservation, the effectiveness and efficiency of the proposed method are demonstrated through extensive experiments conducted on various scenes and reference style images.

28 February 2026

The overall architecture of the proposed LocalGaussStyle.

The escalating economic losses in agriculture due to deer intrusion, estimated to be in the hundreds of millions of dollars annually in the U.S., highlight the inadequacy of traditional mitigation strategies such as hunting, fencing, use of repellents, and scare tactics. This underscores a critical need for intelligent, autonomous solutions capable of real-time deer detection and deterrence. But the progress in this field is impeded by a significant gap in the literature, mainly the lack of a domain-specific, practical dataset and limited studies on the viability of deer detection systems on edge devices. To address this gap, this study presents a comprehensive evaluation of state-of-the-art deep learning models for deer detection in challenging real-world scenarios. We introduce a curated, publicly available dataset of 3095 annotated images with bounding box annotation of deer. Then, we provide an extensive comparative analysis of 12 model variants across four recent YOLO architectures (v8 to v11). Finally, we evaluated their performance on two representative edge computing platforms, the CPU-based Raspberry Pi 5 and the GPU-accelerated NVIDIA Jetson AGX Xavier, to assess feasibility for real-world field deployment. To ensure a standardized comparison, we established a framework-agnostic deployment pipeline using universal Open Neural Network Exchange (ONNX) runtimes. Results show that the real-time detection performance is not feasible on Raspberry Pi using universal runtimes, suggesting that while framework-agnostic runtimes facilitate portability, low-power CPU deployment requires hardware-specific optimization to achieve real-time thresholds. Conversely, NVIDIA Jetson provides greater than 30 frames per second (FPS) with ‘s’ and ‘n’ series models. This study also reveals that smaller, architecturally advanced models such as YOLOv11n, YOLOv8s, and YOLOv9s offer the optimal balance of high accuracy (Average Precision (AP) > 0.85) and computational efficiency (Inference Time < 34 milliseconds).

28 February 2026

Sample images from two sources: Roboflow Universe and Idaho Cameratraps.

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Electronics - ISSN 2079-9292