• 제목/요약/키워드: Vector Potential

검색결과 638건 처리시간 0.025초

Machine learning-based techniques to facilitate the production of stone nano powder-reinforced manufactured-sand concrete

  • Zanyu Huang;Qiuyue Han;Adil Hussein Mohammed;Arsalan Mahmoodzadeh;Nejib Ghazouani;Shtwai Alsubai;Abed Alanazi;Abdullah Alqahtani
    • Advances in nano research
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    • 제15권6호
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    • pp.533-539
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    • 2023
  • This study aims to examine four machine learning (ML)-based models for their potential to estimate the splitting tensile strength (STS) of manufactured sand concrete (MSC). The ML models were trained and tested based on 310 experimental data points. Stone nanopowder content (SNPC), curing age (CA), and water-to-cement (W/C) ratio were also studied for their impacts on the STS of MSC. According to the results, the support vector regression (SVR) model had the highest correlation with experimental data. Still, all of the optimized ML models showed promise in estimating the STS of MSC. Both ML and laboratory results showed that MSC with 10% SNPC improved the STS of MSC.

금형 기반 진동 신호 패턴의 유사도 분석을 통한 사출성형공정 변화 감지에 대한 연구 (A Study on Detecting Changes in Injection Molding Process through Similarity Analysis of Mold Vibration Signal Patterns)

  • 김종선
    • Design & Manufacturing
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    • 제17권3호
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    • pp.34-40
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    • 2023
  • In this study, real-time collection of mold vibration signals during injection molding processes was achieved through IoT devices installed on the mold surface. To analyze changes in the collected vibration signals, injection molding was performed under six different process conditions. Analysis of the mold vibration signals according to process conditions revealed distinct trends and patterns. Based on this result, cosine similarity was applied to compare pattern changes in the mold vibration signals. The similarity in time and acceleration vector space between the collected data was analyzed. The results showed that under identical conditions for all six process settings, the cosine similarity remained around 0.92±0.07. However, when different process conditions were applied, the cosine similarity decreased to the range of 0.47±0.07. Based on these results, a cosine similarity threshold of 0.60~0.70 was established. When applied to the analysis of mold vibration signals, it was possible to determine whether the molding process was stable or whether variations had occurred due to changes in process conditions. This establishes the potential use of cosine similarity based on mold vibration signals in future applications for real-time monitoring of molding process changes and anomaly detection.

Application Consideration of Machine Learning Techniques in Satellite Systems

  • Jin-keun Hong
    • International journal of advanced smart convergence
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    • 제13권2호
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    • pp.48-60
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    • 2024
  • With the exponential growth of satellite data utilization, machine learning has become pivotal in enhancing innovation and cybersecurity in satellite systems. This paper investigates the role of machine learning techniques in identifying and mitigating vulnerabilities and code smells within satellite software. We explore satellite system architecture and survey applications like vulnerability analysis, source code refactoring, and security flaw detection, emphasizing feature extraction methodologies such as Abstract Syntax Trees (AST) and Control Flow Graphs (CFG). We present practical examples of feature extraction and training models using machine learning techniques like Random Forests, Support Vector Machines, and Gradient Boosting. Additionally, we review open-access satellite datasets and address prevalent code smells through systematic refactoring solutions. By integrating continuous code review and refactoring into satellite software development, this research aims to improve maintainability, scalability, and cybersecurity, providing novel insights for the advancement of satellite software development and security. The value of this paper lies in its focus on addressing the identification of vulnerabilities and resolution of code smells in satellite software. In terms of the authors' contributions, we detail methods for applying machine learning to identify potential vulnerabilities and code smells in satellite software. Furthermore, the study presents techniques for feature extraction and model training, utilizing Abstract Syntax Trees (AST) and Control Flow Graphs (CFG) to extract relevant features for machine learning training. Regarding the results, we discuss the analysis of vulnerabilities, the identification of code smells, maintenance, and security enhancement through practical examples. This underscores the significant improvement in the maintainability and scalability of satellite software through continuous code review and refactoring.

Machine learning application to seismic site classification prediction model using Horizontal-to-Vertical Spectral Ratio (HVSR) of strong-ground motions

  • Francis G. Phi;Bumsu Cho;Jungeun Kim;Hyungik Cho;Yun Wook Choo;Dookie Kim;Inhi Kim
    • Geomechanics and Engineering
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    • 제37권6호
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    • pp.539-554
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    • 2024
  • This study explores development of prediction model for seismic site classification through the integration of machine learning techniques with horizontal-to-vertical spectral ratio (HVSR) methodologies. To improve model accuracy, the research employs outlier detection methods and, synthetic minority over-sampling technique (SMOTE) for data balance, and evaluates using seven machine learning models using seismic data from KiK-net. Notably, light gradient boosting method (LGBM), gradient boosting, and decision tree models exhibit improved performance when coupled with SMOTE, while Multiple linear regression (MLR) and Support vector machine (SVM) models show reduced efficacy. Outlier detection techniques significantly enhance accuracy, particularly for LGBM, gradient boosting, and voting boosting. The ensemble of LGBM with the isolation forest and SMOTE achieves the highest accuracy of 0.91, with LGBM and local outlier factor yielding the highest F1-score of 0.79. Consistently outperforming other models, LGBM proves most efficient for seismic site classification when supported by appropriate preprocessing procedures. These findings show the significance of outlier detection and data balancing for precise seismic soil classification prediction, offering insights and highlighting the potential of machine learning in optimizing site classification accuracy.

Macroeconomic Determinants of Housing Prices in Korea VAR and LSTM Forecast Comparative Analysis During Pandemic of COVID-19

  • Starchenko, Maria;Jangsoon Kim;Namhyuk Ham;Jae-Jun Kim
    • 한국건설관리학회논문집
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    • 제25권4호
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    • pp.53-65
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    • 2024
  • During COVID-19 the housing market in Korea experienced the soaring prices, despite the decrease in the economic growth rate. This paper aims to analyze macroeconomic determinants affecting housing prices in Korea during the pandemic and find an appropriate statistic model to forecast the changes in housing prices in Korea. First, an appropriate lag for the model using Akaike information criterion was found. After the macroeconomic factors were checked if they possess the unit root, the dependencies in the model were analyzed using vector autoregression (VAR) model. As for the prediction, the VAR model was used and, besides, compared afterwards with the long short-term memory (LSTM) model. CPI, mortgage rate, IIP at lag 1 and federal funds effective rate at lag 1 and 2 were found to be significant for housing prices. In addition, the prediction performance of the LSTM model appeared to be more accurate in comparison with the VAR model. The results of the analysis play an essential role in policymaker perception when making decisions related to managing potential housing risks arose during crises. It is essential to take into considerations macroeconomic factors besides the taxes and housing policy amendments and use an appropriate model for prices forecast.

키워드 자동 생성에 대한 새로운 접근법: 역 벡터공간모델을 이용한 키워드 할당 방법 (A New Approach to Automatic Keyword Generation Using Inverse Vector Space Model)

  • 조원진;노상규;윤지영;박진수
    • Asia pacific journal of information systems
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    • 제21권1호
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    • pp.103-122
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    • 2011
  • Recently, numerous documents have been made available electronically. Internet search engines and digital libraries commonly return query results containing hundreds or even thousands of documents. In this situation, it is virtually impossible for users to examine complete documents to determine whether they might be useful for them. For this reason, some on-line documents are accompanied by a list of keywords specified by the authors in an effort to guide the users by facilitating the filtering process. In this way, a set of keywords is often considered a condensed version of the whole document and therefore plays an important role for document retrieval, Web page retrieval, document clustering, summarization, text mining, and so on. Since many academic journals ask the authors to provide a list of five or six keywords on the first page of an article, keywords are most familiar in the context of journal articles. However, many other types of documents could not benefit from the use of keywords, including Web pages, email messages, news reports, magazine articles, and business papers. Although the potential benefit is large, the implementation itself is the obstacle; manually assigning keywords to all documents is a daunting task, or even impractical in that it is extremely tedious and time-consuming requiring a certain level of domain knowledge. Therefore, it is highly desirable to automate the keyword generation process. There are mainly two approaches to achieving this aim: keyword assignment approach and keyword extraction approach. Both approaches use machine learning methods and require, for training purposes, a set of documents with keywords already attached. In the former approach, there is a given set of vocabulary, and the aim is to match them to the texts. In other words, the keywords assignment approach seeks to select the words from a controlled vocabulary that best describes a document. Although this approach is domain dependent and is not easy to transfer and expand, it can generate implicit keywords that do not appear in a document. On the other hand, in the latter approach, the aim is to extract keywords with respect to their relevance in the text without prior vocabulary. In this approach, automatic keyword generation is treated as a classification task, and keywords are commonly extracted based on supervised learning techniques. Thus, keyword extraction algorithms classify candidate keywords in a document into positive or negative examples. Several systems such as Extractor and Kea were developed using keyword extraction approach. Most indicative words in a document are selected as keywords for that document and as a result, keywords extraction is limited to terms that appear in the document. Therefore, keywords extraction cannot generate implicit keywords that are not included in a document. According to the experiment results of Turney, about 64% to 90% of keywords assigned by the authors can be found in the full text of an article. Inversely, it also means that 10% to 36% of the keywords assigned by the authors do not appear in the article, which cannot be generated through keyword extraction algorithms. Our preliminary experiment result also shows that 37% of keywords assigned by the authors are not included in the full text. This is the reason why we have decided to adopt the keyword assignment approach. In this paper, we propose a new approach for automatic keyword assignment namely IVSM(Inverse Vector Space Model). The model is based on a vector space model. which is a conventional information retrieval model that represents documents and queries by vectors in a multidimensional space. IVSM generates an appropriate keyword set for a specific document by measuring the distance between the document and the keyword sets. The keyword assignment process of IVSM is as follows: (1) calculating the vector length of each keyword set based on each keyword weight; (2) preprocessing and parsing a target document that does not have keywords; (3) calculating the vector length of the target document based on the term frequency; (4) measuring the cosine similarity between each keyword set and the target document; and (5) generating keywords that have high similarity scores. Two keyword generation systems were implemented applying IVSM: IVSM system for Web-based community service and stand-alone IVSM system. Firstly, the IVSM system is implemented in a community service for sharing knowledge and opinions on current trends such as fashion, movies, social problems, and health information. The stand-alone IVSM system is dedicated to generating keywords for academic papers, and, indeed, it has been tested through a number of academic papers including those published by the Korean Association of Shipping and Logistics, the Korea Research Academy of Distribution Information, the Korea Logistics Society, the Korea Logistics Research Association, and the Korea Port Economic Association. We measured the performance of IVSM by the number of matches between the IVSM-generated keywords and the author-assigned keywords. According to our experiment, the precisions of IVSM applied to Web-based community service and academic journals were 0.75 and 0.71, respectively. The performance of both systems is much better than that of baseline systems that generate keywords based on simple probability. Also, IVSM shows comparable performance to Extractor that is a representative system of keyword extraction approach developed by Turney. As electronic documents increase, we expect that IVSM proposed in this paper can be applied to many electronic documents in Web-based community and digital library.

1990년대 이후 한국경제의 성장: 수요 및 공급 측 요인의 문제 (The Economic Growth of Korea Since 1990 : Contributing Factors from Demand and Supply Sides)

  • 허석균
    • KDI Journal of Economic Policy
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    • 제31권1호
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    • pp.169-206
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    • 2009
  • 본 연구는 1990년대 이후의 한국경제의 성장패턴을 이해하기 위한 노력의 일환이다. 이를 위해, 본 연구에서는 Blanchard and Quah(1989)가 제시한 바와 같이 장기제약식하의 구조적 벡터자기회귀추정법(Structural Vector Auto Regression: SVAR)에 의거하여 우리나라의 경제를 오늘에 이르게 한 다양한 충격들을 식별하고 각각의 상대적 기여도를 구분하고자 하였다. 보다 구체적으로는 Blanchard and Quah의 2-변수 모형과 이를 확장한 3-변수 모형, 그리고 New Keynesian류의 선형모형을 변형시킨 두 개의 모형을 분석하였다. 특히, 후자의 두 모형은 1997년 외환위기 이후 있었던 외환시장체제(고정환율제도에서 변동환율제도)와 통화정책기조(통화총량제에서 물가목표제)의 변화를 반영하도록 구성되었다는 점에서 의의를 갖는다. 이러한 각 모형으로부터의 추정 결과를 충격반응 및 예측오차분해 분석의 형식으로 정리 비교한 결과 다음과 같은 두 가지 공통점을 발견할 수 있었다. 첫째, 경제성장률의 변동은 생산성의 충격에 주로 기인하며, 이와 같은 경향은 2000년대 이후 더 강해진 것으로 보인다. 이는 2000년대 이후 우리 경제의 성장이 잠재성장률과 밀접한 관계를 갖고 있음을 시사한다. 둘째, 2000년대 이후 충격반응의 크기나 지속성이 전반적으로 줄어드는 경향이 있다. 무역의존도가 높은 우리 경제상황에 비추어 2000년대의 전 세계적인 저(低)금리, 저(低)인플레이션 및 견실한 성장세, 그리고 중국경제의 부상이 자본 및 수출 수입 수요의 안정적인 확보를 도모하여 특히 각 부문 충격이 경제에 미치는 영향을 반감시켰을 개연성이 있다. 분석에 사용된 모형과 식별에 사용된 충격의 다양한 조합에도 불구하고 위의 두 가지 패턴은 일관되게 관측되고 있음에 비추어 볼 때, 2000년 이후 우려되고 있는 우리나라의 경제성장률 저하 현상은 잠재성장률 하락에 주로 기인하는 것으로 판단된다.

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독활 에탄올 추출물의 대장암 세포에서 Cyclin D1 단백질 분해 유도를 통한 세포 생육 억제활성 (Anti-proliferative Activity of Ethanol Extracts of Root of Aralia cordata var. continentalis through Proteasomal Degradation of Cyclin D1 in Human Colorectal Cancer Cells)

  • 박수빈;박광훈;송훈민;박지혜;신명수;손호준;엄유리;정진부
    • 한국약용작물학회지
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    • 제25권5호
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    • pp.328-334
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    • 2017
  • Background: In this study, we evaluated the anti-cancer activity and potential molecular mechanism of 70% ethanol extracts of the root of Aralia cordata var. continentalis (Kitagawa) Y. C. Chu (RAc-E70) against human colorectal cancer cells. Methods and Results: RAc-E70 suppressed the proliferation of the human colorectal cancer cell lines, HCT116 and SW480. Although RAc-E70 reduction cyclin D1 expression at the protein and mRNA levels, RAc-E70-induced reduction in cyclin D1 protein level occurred more dramatically than that of cyclin D1 mRNA. The RAc-E70-induced downregulation of cyclin D1 expression was attenuated in the presence of MG132. Additionally, RAc-E70 reduced HA-cyclin D1 levels in HCT116 cells transfected with HA-tagged wild type-cyclin D1 expression vector. RAc-E70-mediated cyclin D1 degradation was blocked in the presence of LiCl, a $GSK3{\beta}$ inhibitorbut, but not PD98059, an ERK1/2 inhibitor and SB203580, a p38 inhibitor. Furthermore, RAc-E70 phosphorylated cyclin D1 at threonine-286 (T286), and LiCl-induced $GSK3{\beta}$ inhibition reduced the RAc-E70-mediated phosphorylation of cyclin D1 at T286. Conclusions: Our results suggested that RAc-E70 may downregulate cyclin D1 expression as a potential anti-cancer target through $GSK3{\beta}$-dependent cyclin D1 degradation. Based on these findings, RAc-E70 maybe a potential candidate for the development of chemopreventive or therapeutic agents for human colorectal cancer.

인체 급성백혈병 Jurkat T 세포에 있어서 L-canavanine에 의해 유도되는 세포자살기전에 미치는 단백질 티로신 키나아제 p56lck의 저해 효과 (A Natural L-Arginine Analog, L-Canavanine-Induced Apoptosis is Suppressed by Protein Tyrosine Kinase p56lck in Human Acute Leukemia Jurkat T Cells)

  • 박해선;전도연;우현주;류석우;김경민;김상국;박완;문병조;김영호
    • 생명과학회지
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    • 제19권11호
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    • pp.1529-1537
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    • 2009
  • L-arginine 구조유사체인 L-canavanine의 인체 급성백혈병 Jurkat T 세포에 대한 apoptosis 유도활성이 단백질 티로신키나아제 $p56^{lck}$에 어떻게 조절되는지를 규명하기 위해 $p56^{lck}$를 발현하는 Jurkat T 세포주 E6.1과 $p56^{lck}$-결손 Jurkat T 세포주 JCaM1.6에 있어서 L-canavanine의 세포독성, L-canavanine에 의해 유도되는 apoptotic DNA fragmentation 및 apoptotic sub-$G_1$ peak를 비교하여 본 바, $p56^{lck}$-negative JCaM1.6 세포가 $p56^{lck}$-positive E6.1 세포에 비해 L-canavanine의 apoptotis 유도활성에 훨씬 더 민감한 것으로 나타났다. 이러한 $p56^{lck}$-negative JCaM1.6 세포의 민감성은 JCaM1.6 세포에 $p56^{lck}$ 유전자를 transfection시켜 발현시키면 현저히 감소되었다. L-Canavanine에 의해 유도되는 apoptosis관련 현상들을 $p56^{lck}$-stable transfectant인 JCaM1.6/lck 세포와 empty vector-transfectant 인 $p56^{lck}$-negaive JCaM1.6/vector 세포에서 Western blot analysis로 비교한 결과, L-canavanine에 의해 유도되는 mitochondrial membrane potential (${\Delta\Psi}m$)의 감소, caspase-9, -8, -7 및 -3의 활성화, 그리고 PARP 및 $PLC{\gamma}$-1의 분해가 JCaM1.6/vector 세포에 비해 JCaM1.6/lck 세포에서 더 약하게 나타났다. JCaM1.6/lck 세포를 2.5 mM L-canavanine으로 처리한 다음 세포 내 $p56^{lck}$ kinase 활성의 변화를 $\alpha$-casein을 기질로 하여 시간 별로 측정한 결과, L-canavanine의 처리 후 15분만에 $p56^{lck}$ kinase의 활성이 약 1.6배 증가되었으며 이후 6시간 동안은 약 1.3~1.4 배정도 증가된 수준으로 kinase 활성이 유지되는 것으로 확인되었다. L-Canavanine에 의한 apoptosis의 개시에 Fas/FasL 상호작용이 관련되는지를 규명하기 위해 FADD-negative Jurkat T 세포주 I2.1, caspase-8-negative Jurkat T 세포주 I9.2 및 wild-type Jurkat T 세포주 A3에 대한 L-canavanine의 세포독성을 비교한 결과, A3와 I2.1 세포의 경우는 L-canavanine의 세포독성이 동일하게 나타났고, 특히 caspase-8가 결손된 I9.2 세포의 경우는 L-canavanine의 세포독성에 대한 민감성이 A3와 I2.1 세포에 비해 단지 미약하게만 완화되는 것으로 나타나, L-canavanine의한 apoptosis에는 Fas/FasL 상호작용이 관련되어 있지 않으며, 또한 caspase-8의 역할이 필수적이지 않음을 시사하였다. Jurkat T 세포에 있어서 L-canavanie에 의해 유도되는 sub-$G_1$ peak 및 caspases 활성화에 미치는 pan-caspase inhibitor (z-VAD-fmk), caspase-9 inhibitor (z-LEHD-fmk), caspase-3 inhibitor (z-DEVD-fmk), caspase-4 inhibitor (z-LEVD-fmk) 및 caspase-12 inhibitor (z-ATAD-fmk)의 영향을 조사한 결과, L-canavanie에 의한 apoptosis는 ${\Delta\Psi}m$의 감소, caspase-9 및 caspase -3의 활성화에 뒤따른 caspase-8 및 caspase-7의 활성화, 그리고 PARP의 분해의 순서로 유도되는 것으로 나타났으며, 아울러 caspase-9의 활성화와 함께 caspase-12의 활성화가 L-canavanine 처리에 따른 caspase-3의 활성화에 요구되는 것으로 확인되었다. 결론적으로, L-canavanine 처리에 의한 Jurkat T 세포의 apoptosis는 ${\Delta\Psi}m$ 감소, caspase-9, caspase-3 및 caspase-7의 활성화에 의해 유도되며, 이들 apoptosis 현상들은 $p56^{lck}$에 의해 negative regulation되었다.

기후 변화 적응을 위한 벡터매개질병의 생태 모델 및 심층 인공 신경망 기반 공간-시간적 발병 모델링 및 예측 (Spatio-Temporal Incidence Modeling and Prediction of the Vector-Borne Disease Using an Ecological Model and Deep Neural Network for Climate Change Adaption)

  • 김상윤;남기전;허성구;이선정;최지훈;박준규;유창규
    • Korean Chemical Engineering Research
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    • 제58권2호
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    • pp.197-208
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    • 2020
  • 본 연구에서는 발병 횟수가 빠르게 증가하고 있는 벡터매개질병(vector-borne disease) 중 하나인 쯔쯔가무시증의 발병 특성을 공간적 그리고 시간적으로 분석하고 기후변화 시나리오에 따른 미래 발병 특성을 예측하였다. 쯔쯔가무시증의 공간적 분포와 발병률을 예측하기 위하여 환경 그리고 사회 변수의 공간적 특성을 이용하여 maximum entropy(MaxEnt) 생태 모델을 구성하고, 주요 변수의 쯔쯔가무시증 발병에 관한 상관관계를 분석하였다. 공간 특성 중 환경변수인 고도 및 기온이 주요한 변수로 분석되었으며, 이는 쯔쯔가무시증의 매개체인 털진드기의 생육 환경과 주요 관련이 있는 것으로 나타났다. 쯔쯔가무시증의 시간적 발병 횟수는 심층 인공 신경망 모델기반 예측을 하였으며, 특히 쯔쯔가무시증의 주요 특성인 지연 효과를 고려하여 모델을 구성하였다. 심층 인공 신경망을 이용한 예측 결과 여름철의 기온, 강우량, 그리고 습도가 털진드기의 활동에 주된 관련이 있으며 가을철의 쯔쯔가무시증 발병 횟수에 영향을 끼치는 것으로 확인 되었다. 또한, 기존 통계적 예측 모델과 비교하였을 때, 심층 인공 신경망 기반 예측 모델의 예측 정확성이 우수함을 확인하였다. 공간적 그리고 시간적 모델에 기후 변화 시나리오를 이용하여 2040년의 쯔쯔가무시증 발병 특성을 예측한 결과, 최대 발병률이 8% 증가, 발병률이 높은 지역이 9% 확대, 그리고 주된 발병 기간이 2개월 증가하였다. 본 연구 결과를 통해 쯔쯔가무시증의 공간적 및 시간적 발병 특성 분석을 통하여, 공중보건 측면에서 벡터매개 질병 발병 요인 규명을 통해 주민 건강을 위한 질병 관리 및 예측에 기여할 수 있을 것으로 기대한다.