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Article
Publication date: 6 August 2021

Lin-sheng Liu, Qian Lin, Hai-feng Wu, Yi-Jun Chen and Liu-Lin Hu

The design and implementation of a broadband quasi-monolithic microwave integrated circuit (q-MMIC) power amplifier (PA) is presented for 0.2 to 2.2 GHz applications.

Abstract

Purpose

The design and implementation of a broadband quasi-monolithic microwave integrated circuit (q-MMIC) power amplifier (PA) is presented for 0.2 to 2.2 GHz applications.

Design/methodology/approach

To obtain an efficient, high-gain and high-power performance with in a compact and low-cost size, the prototype is based on Gallium nitride (GaN) on SiC 0.25-µm transistors, whereas the passive matching networks are realized on an AlN substrate as thin film circuit.

Findings

Measured results of the q-MMIC PA across the 0.2 to 2.2 GHz band show at least 32 ± 3 dB small-signal gains, an output power of 7 to 12 W and an average power add efficiency greater than 54%. The q-MMIC occupies an area of 12.8 × 14.5 mm2.

Originality/value

To the best of the authors’ knowledge, this work reports the first full integrated PA which covers the frequency range of 0.2 to 2.2 GHz and achieves the combination of highest gain, about 10 W output power, together with the smallest component size among all published GaN PAs to date.

Details

Circuit World, vol. 49 no. 2
Type: Research Article
ISSN: 0305-6120

Keywords

Abstract

Details

Radical Environmental Resistance
Type: Book
ISBN: 978-1-83797-379-8

Article
Publication date: 13 December 2022

Elena Dowin Kennedy, Alisha Blakeney Horky and Ethan Kaufmann

The purpose of this paper is to examine how small and medium enterprises (SMEs) within an entrepreneurial community engage in cross-promotion on social media via Facebook. This…

Abstract

Purpose

The purpose of this paper is to examine how small and medium enterprises (SMEs) within an entrepreneurial community engage in cross-promotion on social media via Facebook. This paper specifically examines how SME community members leverage their horizontal and vertical ties to generate publicity, improve brand perceptions and drive traffic to themselves or community events.

Design/methodology/approach

This paper uses a qualitative approach, examining 1,025 Facebook posts from 27 members of an entrepreneurial community in the southeast USA to develop typologies of posting strategies, post purposes and post functions.

Findings

This paper finds that in the entrepreneurial community of interest, many members engage in cross-promotion via social media at various frequencies and with distinctive purposes. This paper identifies five distinct patterns of cross-promotion – quality signaling, traffic driving, community amplifying, hybrid cross-promotion and infrequent engagement. This paper also notes differences between cross-promotional strategies of vertical and horizontal partners.

Originality/value

This paper advances understanding of social media marketing and identifies key patterns of SME social media behavior. Although previous research has noted the importance of social media for SMEs, there has been little research regarding posting strategies being used by these firms. Further, to this point, there has not been a framework to understand how firms can use social media to cross-promote one another. This paper seeks to begin filling these gaps by providing a useful framework that can be used by SMEs in coordinating their social media posting strategies as well as by researchers studying SME cross-promotion.

Details

Journal of Research in Marketing and Entrepreneurship, vol. 25 no. 2
Type: Research Article
ISSN: 1471-5201

Keywords

Article
Publication date: 11 July 2023

Abhinandan Chatterjee, Pradip Bala, Shruti Gedam, Sanchita Paul and Nishant Goyal

Depression is a mental health problem characterized by a persistent sense of sadness and loss of interest. EEG signals are regarded as the most appropriate instruments for…

Abstract

Purpose

Depression is a mental health problem characterized by a persistent sense of sadness and loss of interest. EEG signals are regarded as the most appropriate instruments for diagnosing depression because they reflect the operating status of the human brain. The purpose of this study is the early detection of depression among people using EEG signals.

Design/methodology/approach

(i) Artifacts are removed by filtering and linear and non-linear features are extracted; (ii) feature scaling is done using a standard scalar while principal component analysis (PCA) is used for feature reduction; (iii) the linear, non-linear and combination of both (only for those whose accuracy is highest) are taken for further analysis where some ML and DL classifiers are applied for the classification of depression; and (iv) in this study, total 15 distinct ML and DL methods, including KNN, SVM, bagging SVM, RF, GB, Extreme Gradient Boosting, MNB, Adaboost, Bagging RF, BootAgg, Gaussian NB, RNN, 1DCNN, RBFNN and LSTM, that have been effectively utilized as classifiers to handle a variety of real-world issues.

Findings

1. Among all, alpha, alpha asymmetry, gamma and gamma asymmetry give the best results in linear features, while RWE, DFA, CD and AE give the best results in non-linear feature. 2. In the linear features, gamma and alpha asymmetry have given 99.98% accuracy for Bagging RF, while gamma asymmetry has given 99.98% accuracy for BootAgg. 3. For non-linear features, it has been shown 99.84% of accuracy for RWE and DFA in RF, 99.97% accuracy for DFA in XGBoost and 99.94% accuracy for RWE in BootAgg. 4. By using DL, in linear features, gamma asymmetry has given more than 96% accuracy in RNN and 91% accuracy in LSTM and for non-linear features, 89% accuracy has been achieved for CD and AE in LSTM. 5. By combining linear and non-linear features, the highest accuracy was achieved in Bagging RF (98.50%) gamma asymmetry + RWE. In DL, Alpha + RWE, Gamma asymmetry + CD and gamma asymmetry + RWE have achieved 98% accuracy in LSTM.

Originality/value

A novel dataset was collected from the Central Institute of Psychiatry (CIP), Ranchi which was recorded using a 128-channels whereas major previous studies used fewer channels; the details of the study participants are summarized and a model is developed for statistical analysis using N-way ANOVA; artifacts are removed by high and low pass filtering of epoch data followed by re-referencing and independent component analysis for noise removal; linear features, namely, band power and interhemispheric asymmetry and non-linear features, namely, relative wavelet energy, wavelet entropy, Approximate entropy, sample entropy, detrended fluctuation analysis and correlation dimension are extracted; this model utilizes Epoch (213,072) for 5 s EEG data, which allows the model to train for longer, thereby increasing the efficiency of classifiers. Features scaling is done using a standard scalar rather than normalization because it helps increase the accuracy of the models (especially for deep learning algorithms) while PCA is used for feature reduction; the linear, non-linear and combination of both features are taken for extensive analysis in conjunction with ML and DL classifiers for the classification of depression. The combination of linear and non-linear features (only for those whose accuracy is highest) is used for the best detection results.

Details

Aslib Journal of Information Management, vol. ahead-of-print no. ahead-of-print
Type: Research Article
ISSN: 2050-3806

Keywords

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