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Volume 10 Issue 07 (July 2023)

S.No. Title & Authors Page No View
1

Title : Discussion on Construction Technology of Steel Composite Supporting Body Inserted At the Top of Deep Foundation Pit Pile

Authors : Zhu Jianqin

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Abstract :

Based on the deep foundation pit project of a high-rise building, this paper analyzes the construction technology of vertical excavation cantilever type supporting cast-in-place pile of deep foundation pit in built-up area by combining numerical simulation with field practice, and introduces the construction technology principle and construction flow of the steel composite supporting system inserted at the top of deep foundation pit. The engineering results show that: The construction technology of steel composite support system inserted at the top of deep foundation pit piles successfully solves the difficult problem of safety in the process of foundation pit excavation, and effectively shortens the construction period, and the technology has a good application prospect. The study of construction technology can provide better guidance for similar construction of vertical excavation cantilever supporting cast-in-place pile, and help to promote the progress of foundation pit supporting construction technology

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2

Title : Research on Weighted Word2vec Algorithm for Fine-Grained Sentiment Analysis

Authors : Xu Qian, Sun Baoshan

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Abstract :

The rapid development of the Internet has enriched people's lifestyles. People can buy online desired products and services anytime. More and more people are willing to publish their reviews of a product on Taobao, Douyin and other websites. These   comments   tend   to   be   subjective   and   include   the commentator's evaluation of the emotional attitude. Users are also accustomed to getting valuable information from various comments to assist their own decision-making. Reviews even produce powerful orientation features. Therefore, how to mine users’  real  emotional  tendency  from  a  large  number  of comment texts has become one of the current research hotspots. As the main technology, text sentiment classification has been extensively and deeply studied. The first problem to be solved is how to efficiently extract text features and convert unstructured product review text to a text representation that computers can understand. Word2Vec  is used widely.  On the  one hand,  it ignores ability of the word to distinguish between categories of text.  On  the  other  hand,It  does  not  consider  the  emotional information contained in the words themselves to distinguish

the role of the emotional categories of text.

Based on this, this paper summarizes the existing word2vec method of emotional feature weighting. It includes TF-IDF-Wo- rd2Vec, I-TF-IDF-Word2Vec, CR-Word2Vec and incorporate an emotional dictionary-weighted Word2Vec.

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3

Title : Research on Tiny Object Detection Optimization based on YOLOv7

Authors : Bi kaiyu, Sun Baoshan

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Abstract :

In this paper, we propose a new object detection model, YOLOv7-TinyObject, which is an upgrade of YOLOv7. Two technologies, SE (Squeeze-and-Excitation) and NWD (Normalized Gaussian Wasserstein Distance), are introduced into YOLOv7 to improve the detection ability of tiny objects. Although YOLOv7 has a great improvement over the previous YOLO series, there are still many shortcomings for detecting tiny objects. The detection of tiny objects has always been a difficult and challenging task in object detection tasks, because tiny objects usually have low resolution and fuzziness, and are easily disturbed by noise and occlusion. To address these issues, we propose a novel optimization method that combines the SE attention(SE) with the NWD technique. First, we analyze the limitations of YOLOv7 in tiny object detection. Specifically, YOLOv7 is prone to the problem of positioning error and missing targets in tiny object detection. To overcome these problems, we introduce the SE. The SE improves the representation ability of important features by adaptively learning the relationship between feature channels. By adjusting the weights of feature channels, the SE can enhance the modeling of important features, thereby improving the accuracy of object detection algorithms. Based on this, we further introduce the NWD to enhance the perception ability of the algorithm for tiny targets. The NWD provides richer semantic information by modeling the contextual information around the target. It considers context relations such as domain information, texture features and edge information of the object and is added to the object detection model to enhance the localization and detection accuracy of tiny objects. By increasing the contextual semantic understanding ability of the target, NWD helps to reduce the problem of localization error and missed detection, and improves the performance of tiny target detection. To validate our proposed optimization method, we use a wide range of datasets for experiments and evaluation. Experimental results show that compared with the traditional YOLOv7 model, our proposed improved method achieves significant performance improvement in tiny object detection. By introducing the SE and NWD, our algorithm exhibits higher accuracy and robustness in tiny target scenarios. Our study shows that the SE attention mechanism can improve the representation ability of important features and the NWD can enhance the perception of tiny targets. With these optimization methods, our algorithm achieves higher accuracy and robustness in the task of tiny object detection. This is of great significance for improving the application performance of object detection algorithms in complex scenes. Future research can further optimize and extend these methods to address challenges in more real-world applications.

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4

Title : Elimination of ILL-Effects of Torsion in Irregular Building through Introduction of Anti Torsion Column

Authors : Shishir Dhawade, Devyani Dhawade, Yogesh Thorat

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Abstract :

This research paper focuses on eliminating torsion in columns and displacements due to torsion in reinforced concrete (RCC) and steel buildings while resisting lateral forces (earthquake and wind) through introduction of an innovative structural element defined as anti-torsion column (ATC). While existing popular software tools analyze torsion in buildings, they do not provide design solutions specifically targeting torsion effects. Even there are codal provisions to substantially reduce torsion in a building .In this study, efforts are made to address this gap by proposing  ATC in the form of a steel tube positioned near the center of mass (C.G.) of the building. To study torsion the research utilizes E Tab, a widely used software to analyze displacements at terrace corners of irregular buildings. The objective is to evaluate the effectiveness of the ATC in eliminating torsional effects. Results of the study demonstrates that introduction of the ATC successfully eliminates torsion effects in columns and torsion related displacements in RCC buildings. Buildings with very irregular shapes can be planned without affecting architectural planning by introducing ATC.

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5

Title : Effect of Potassium Carbonate on the Viscosity of Stored Bombax Costatum

Authors : Prof. Obetta S.E., Prof. Ijabo O. J., Dr D. Adigizi, Ikerave A. F.

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Abstract :

Flowers were collected from a chosen tree as they dropped without the influence of any human activity. Petals were manually detached using hands while the calyxes were sun dried to 5.5%wb and reserved for the study. The dried samples were pounded and sieved using sieve of 0.25mm aperture to achieve uniform particle size. 100ml of distilled water was used along with 10g of sample to form slurries of average consistency for all viscosity experiments. Potassium carbonate was reduced into powder and sieved. Dosages of potassium carbonate preservative were computed as percentage of Bombax costatum sample (0%, 3%, 6%, 9%) in grams and blended with the sample, which was package into ceramic, metal, plastic and glass containers and hermitically stored at room temperature, for nine months. The viscosity of samples was determined using the Brookfield viscometer. The result showed that viscosity of Bombax costatum at 5.5%wb decreases with increase in potassium carbonate, with 0% sample presenting the best performance. The result also showed that all containers performed effectively. Both metal and glass recorded 92% performance efficiency. Metal container was rated above glass due to its low coefficient of variation, compared to glass. Plastic and ceramic presented 90% and 87% performance efficiencies respectively, with control exhibiting the least performance efficiency of 36%. Room temperature and relative humidity of the stored environment were recorded throughout the storage duration

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