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  • https://arxiv.org/abs/2109.07745
    Estimating Wildfire Evacuation Decision and Departure Timing Using Large-Scale GPS Data
    With increased frequency and intensity due to climate change, wildfires have become a growing global concern. This creates severe challenges for fire and emergency services as well as communities in the wildland-urban interface (WUI). To reduce wildfire risk and enhance the safety of WUI communities, improving our understanding of wildfire evacuation is a pressing need. To this end, this study proposes a new methodology to analyze human behavior during wildfires by leveraging a large-scale GPS dataset. This methodology includes a home-location inference algorithm and an evacuation-behavior inference algorithm, to systematically identify different groups of wildfire evacuees (i.e., self-evacuee, shadow evacuee, evacuee under warning, and ordered evacuee). We applied the methodology to the 2019 Kincade Fire in Sonoma County, CA. We found that among all groups of evacuees, self-evacuees and shadow evacuees accounted for more than half of the evacuees during the Kincade Fire. The results also show that inside of the evacuation warning/order zones, the total evacuation compliance rate was around 46% among all the categorized people. The findings of this study can be used by emergency managers and planners to better target public outreach campaigns, training protocols, and emergency communication strategies to prepare WUI households for future wildfire events.
    ARXIV.ORG
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    https://arxiv.org/abs/2109.07745
    Estimating Wildfire Evacuation Decision and Departure Timing Using Large-Scale GPS Data
    With increased frequency and intensity due to climate change, wildfires have become a growing global concern. This creates severe challenges for fire and emergency services as well as communities in the wildland-urban interface (WUI). To reduce wildfire risk and enhance the safety of WUI communities, improving our understanding of wildfire evacuation is a pressing need. To this end, this study proposes a new methodology to analyze human behavior during wildfires by leveraging a large-scale GPS dataset. This methodology includes a home-location inference algorithm and an evacuation-behavior inference algorithm, to systematically identify different groups of wildfire evacuees (i.e., self-evacuee, shadow evacuee, evacuee under warning, and ordered evacuee). We applied the methodology to the 2019 Kincade Fire in Sonoma County, CA. We found that among all groups of evacuees, self-evacuees and shadow evacuees accounted for more than half of the evacuees during the Kincade Fire. The results also show that inside of the evacuation warning/order zones, the total evacuation compliance rate was around 46% among all the categorized people. The findings of this study can be used by emergency managers and planners to better target public outreach campaigns, training protocols, and emergency communication strategies to prepare WUI households for future wildfire events.
    ARXIV.ORG
    https://arxiv.org/abs/2109.07745
    Estimating Wildfire Evacuation Decision and Departure Timing Using Large-Scale GPS Data
    With increased frequency and intensity due to climate change, wildfires have become a growing global concern. This creates severe challenges for fire and emergency services as well as communities in the wildland-urban interface (WUI). To reduce wildfire risk and enhance the safety of WUI communities, improving our understanding of wildfire evacuation is a pressing need. To this end, this study proposes a new methodology to analyze human behavior during wildfires by leveraging a large-scale GPS dataset. This methodology includes a home-location inference algorithm and an evacuation-behavior inference algorithm, to systematically identify different groups of wildfire evacuees (i.e., self-evacuee, shadow evacuee, evacuee under warning, and ordered evacuee). We applied the methodology to the 2019 Kincade Fire in Sonoma County, CA. We found that among all groups of evacuees, self-evacuees and shadow evacuees accounted for more than half of the evacuees during the Kincade Fire. The results also show that inside of the evacuation warning/order zones, the total evacuation compliance rate was around 46% among all the categorized people. The findings of this study can be used by emergency managers and planners to better target public outreach campaigns, training protocols, and emergency communication strategies to prepare WUI households for future wildfire events.
    ARXIV.ORG
    https://arxiv.org/abs/2109.07745
    Estimating Wildfire Evacuation Decision and Departure Timing Using Large-Scale GPS Data
    With increased frequency and intensity due to climate change, wildfires have become a growing global concern. This creates severe challenges for fire and emergency services as well as communities in the wildland-urban interface (WUI). To reduce wildfire risk and enhance the safety of WUI communities, improving our understanding of wildfire evacuation is a pressing need. To this end, this study proposes a new methodology to analyze human behavior during wildfires by leveraging a large-scale GPS dataset. This methodology includes a home-location inference algorithm and an evacuation-behavior inference algorithm, to systematically identify different groups of wildfire evacuees (i.e., self-evacuee, shadow evacuee, evacuee under warning, and ordered evacuee). We applied the methodology to the 2019 Kincade Fire in Sonoma County, CA. We found that among all groups of evacuees, self-evacuees and shadow evacuees accounted for more than half of the evacuees during the Kincade Fire. The results also show that inside of the evacuation warning/order zones, the total evacuation compliance rate was around 46% among all the categorized people. The findings of this study can be used by emergency managers and planners to better target public outreach campaigns, training protocols, and emergency communication strategies to prepare WUI households for future wildfire events.
    ARXIV.ORG
    https://arxiv.org/abs/2109.07745
    Estimating Wildfire Evacuation Decision and Departure Timing Using Large-Scale GPS Data
    With increased frequency and intensity due to climate change, wildfires have become a growing global concern. This creates severe challenges for fire and emergency services as well as communities in the wildland-urban interface (WUI). To reduce wildfire risk and enhance the safety of WUI communities, improving our understanding of wildfire evacuation is a pressing need. To this end, this study proposes a new methodology to analyze human behavior during wildfires by leveraging a large-scale GPS dataset. This methodology includes a home-location inference algorithm and an evacuation-behavior inference algorithm, to systematically identify different groups of wildfire evacuees (i.e., self-evacuee, shadow evacuee, evacuee under warning, and ordered evacuee). We applied the methodology to the 2019 Kincade Fire in Sonoma County, CA. We found that among all groups of evacuees, self-evacuees and shadow evacuees accounted for more than half of the evacuees during the Kincade Fire. The results also show that inside of the evacuation warning/order zones, the total evacuation compliance rate was around 46% among all the categorized people. The findings of this study can be used by emergency managers and planners to better target public outreach campaigns, training protocols, and emergency communication strategies to prepare WUI households for future wildfire events.
    ARXIV.ORG
    https://arxiv.org/abs/2109.07745
    Estimating Wildfire Evacuation Decision and Departure Timing Using Large-Scale GPS Data
    With increased frequency and intensity due to climate change, wildfires have become a growing global concern. This creates severe challenges for fire and emergency services as well as communities in the wildland-urban interface (WUI). To reduce wildfire risk and enhance the safety of WUI communities, improving our understanding of wildfire evacuation is a pressing need. To this end, this study proposes a new methodology to analyze human behavior during wildfires by leveraging a large-scale GPS dataset. This methodology includes a home-location inference algorithm and an evacuation-behavior inference algorithm, to systematically identify different groups of wildfire evacuees (i.e., self-evacuee, shadow evacuee, evacuee under warning, and ordered evacuee). We applied the methodology to the 2019 Kincade Fire in Sonoma County, CA. We found that among all groups of evacuees, self-evacuees and shadow evacuees accounted for more than half of the evacuees during the Kincade Fire. The results also show that inside of the evacuation warning/order zones, the total evacuation compliance rate was around 46% among all the categorized people. The findings of this study can be used by emergency managers and planners to better target public outreach campaigns, training protocols, and emergency communication strategies to prepare WUI households for future wildfire events.
    ARXIV.ORG
    https://arxiv.org/abs/2109.07745
    Estimating Wildfire Evacuation Decision and Departure Timing Using Large-Scale GPS Data
    With increased frequency and intensity due to climate change, wildfires have become a growing global concern. This creates severe challenges for fire and emergency services as well as communities in the wildland-urban interface (WUI). To reduce wildfire risk and enhance the safety of WUI communities, improving our understanding of wildfire evacuation is a pressing need. To this end, this study proposes a new methodology to analyze human behavior during wildfires by leveraging a large-scale GPS dataset. This methodology includes a home-location inference algorithm and an evacuation-behavior inference algorithm, to systematically identify different groups of wildfire evacuees (i.e., self-evacuee, shadow evacuee, evacuee under warning, and ordered evacuee). We applied the methodology to the 2019 Kincade Fire in Sonoma County, CA. We found that among all groups of evacuees, self-evacuees and shadow evacuees accounted for more than half of the evacuees during the Kincade Fire. The results also show that inside of the evacuation warning/order zones, the total evacuation compliance rate was around 46% among all the categorized people. The findings of this study can be used by emergency managers and planners to better target public outreach campaigns, training protocols, and emergency communication strategies to prepare WUI households for future wildfire events.
    ARXIV.ORG
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  • https://ui.adsabs.harvard.edu/abs/2017CEUS...65..113L
    A machine learning-based method for the large-scale evaluation of the qualities of the urban environment
    Given the present size of modern cities, it is beyond the perceptual capacity of most people to develop a good knowledge about the qualities of the urban space at every street corner. Correspondingly, for planners, it is also difficult to accurately answer questions such as 'where the quality of the physical environment is the most dilapidated in the city that regeneration should be given first consideration' and 'in fast urbanising cities, how is the city appearance changing'. To address this issue, in the present study, we present a computer vision method that contains three machine learning models for the large-scale and automatic evaluation on the qualities of the urban environment by leveraging state-of-the-art machine learning techniques and wide-coverage street view images. From various physical qualities that have been identified by previous research to be important for the urban visual experience, we choose two key qualities, the construction and maintenance quality of building facade and the continuity of street wall, to be measured in this research. To test the validity of the proposed method, we compare the machine scores with public rating scores collected on-site from 752 passers-by at 56 locations in the city. We show that the machine learning models can produce a medium-to-good estimation of people's real experience, and the modelling results can be applied in many ways by researchers, planners and local residents.
    UI.ADSABS.HARVARD.EDU
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  • https://en.wikipedia.org/wiki/Geologic_time_scale
    Geologic time scale
    The geologic time scale, or geological time scale, (GTS) is a representation of time based on the rock record of Earth. It is a system of chronological dating that uses chronostratigraphy (the process of relating strata to time) and geochronology (scientific branch of geology that aims to determine the age of rocks). It is used primarily by Earth scientists (including geologists, paleontologists, geophysicists, geochemists, and paleoclimatologists) to describe the timing and relationships of events in geologic history. The time scale has been developed through the study of rock layers and the observation of their relationships and identifying features such as lithologies, paleomagnetic properties, and fossils. The definition of standardized international units of geologic time is the responsibility of the International Commission on Stratigraphy (ICS), a constituent body of the International Union of Geological Sciences (IUGS), whose primary objective is to precisely define global chronostratigraphic units of the International Chronostratigraphic Chart (ICC) that are used to define divisions of geologic time. The chronostratigraphic...
    EN.WIKIPEDIA.ORG
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  • https://www.digittrix.com/blogs/how-to-scale-a-startup-the-ultimate-guide
    How to Scale a Startup: Complete Guide for 2025 Growth
    Know the right steps to scale a startup. Discover tools, strategies, funding tips, and common challenges for building a successful and scalable business.
    WWW.DIGITTRIX.COM
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  • =1.0">
    <title>Document</title>
    <link rel="stylesheet" href="style.css">
    </head>
    <body>
    <div class="container">
    <h1>Formulário de Cadastro</h1>

    <form action="processa_form.php" method="post">
    Nome: <input type="text" name="nome" placeholder="Digite seu nome"><br><br>

    Email: <input type="email" name="email" placeholder="Digite seu email"><br><br>

    Senha: <input type="password" name="senha" placeholder="Digite sua senha"><br><br>

    Estado Civil:
    <select name='estado_civil'>
    <option value='solteiro'>Solteiro</option>
    <option value='casado'>Casado</option>
    <option value='divorciado'>Divorciado</option>
    </select><br><br>

    Sexo:
    M<input type='radio' name='sexo' value='M'>
    F<input type='radio' name='sexo' value='F'><br><br>

    Interesses:
    <input type='checkbox' name='interesse[]' value='informatica'>Informática
    <input type='checkbox' name='interesse[]' value='esportes'>Esportes
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  • The Rockwell scale is a hardness scale used to measure the hardness of metals, plastics, and other materials. The scale is based on the indentation hardness of a material, which is determined by measuring the depth of an indentation made by pressing a diamond cone or hardened steel ball into the surface of the material. The Rockwell scale is divided into three different scales: A, B, and C. Each scale has its own range of values that indicate increasing levels of hardness.

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  • The Rockwell scale is a hardness scale used to measure the hardness of materials such as metals. It was developed in the early 1900s by Stanley P. Rockwell and is based on the concept of measuring the depth of penetration of an indenter under a large load compared to the penetration made by a preload. The scale typically ranges from 20 (very soft) to 70 (very hard).

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  • The Rockwell scale is a hardness scale used to measure the hardness of materials. It is based on the indentation of a diamond-tipped cone into the material being tested. The hardness of a material is determined by measuring the depth of the indentation and comparing it to a chart that correlates depth to hardness. The Rockwell scale is used for testing metals, plastics, and other materials.

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  • The Rockwell scale is a hardness scale used to measure the hardness of materials. It is based on the indentation hardness principle, which states that the depth of an indentation in a material is proportional to the load applied to create it. The Rockwell scale is divided into several different scales, each with its own range and values. The most commonly used scales are the A, B, C, and D scales. Each scale measures a different range of hardness; for example, the A scale measures very soft materials such as aluminum, while the D scale measures very hard materials such as steel.

    By: ChatGPT AI
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  • The Rockwell scale is a hardness scale used to measure the hardness of materials. It is based on the indentation of a diamond-tipped cone or ball into the material being tested. The hardness number is determined by measuring the depth of the indentation and comparing it to a chart. The Rockwell scale is used in many industries, such as automotive, aerospace, and metalworking. It is also used to measure the hardness of metals, plastics, ceramics, and other materials.

    By: ChatGPT AI
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  • The Rockwell scale is a hardness scale used to measure the hardness of materials, such as metals. It is based on the indentation that a harder material makes in a softer material when a load is applied. The Rockwell scale consists of several different scales, each of which is designated by a letter. The most commonly used scales are the A, B, C and E scales. Each scale has its own range and uses different loads to measure hardness.

    By: ChatGPT AI
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  • The Rockwell scale is a hardness scale used to measure the hardness of materials. It is based on the indentation hardness principle, which states that the depth of penetration of an indenter into a material is a function of the applied load and the properties of the material such as its elastic modulus, yield strength, and hardness. The Rockwell scale consists of several different scales, each denoted by a letter, that use different loads or indenters. Each scale produces a numerical value that corresponds to a particular level of hardness. The most commonly used scales are A, B, C, and D.

    By: ChatGPT AI
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  • The Rockwell scale is a hardness scale used to measure the hardness of materials. It is based on the indentation of a diamond cone or hardened steel ball into the surface of the material. The hardness value is then determined by measuring the depth of the indentation and comparing it to a reference chart. The Rockwell scale has several different scales, each designed to measure different types of materials. The most commonly used scales are the A, B, C, and E scales.

    By: ChatGPT AI
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  • The Rockwell scale is a hardness scale used to measure the hardness of metals. It was developed by Stanley P. Rockwell in the 1920s and is used to measure the hardness of metals, plastics, and other materials. The Rockwell scale is based on a system of indentation tests that measure the depth of an indentation made by a diamond cone or ball indenter pressed into the material being tested. The resulting number indicates how hard the material is, with higher numbers indicating harder materials.

    By: ChatGPT AI
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