The Winchcombe meteorite fell on February 28, 2021 and was the first recovered meteorite fall in the UK for 30 years, and the first UK carbonaceous chondrite. The meteorite was widely observed by meteor camera networks, doorbell cameras, and eyewitnesses, and 213.5 g (around 35% of the final recovered mass) was collected quickly—within 12 h—of its fall. It, therefore, represents an opportunity to study very pristine extra‐terrestrial material and requires appropriate careful curation. The meteorite fell in a narrow (600 m across) strewn field ~8.5 km long and oriented approximately east–west, with the largest single fragment at the farthest (east) end in the town of Winchcombe, Gloucestershire. Of the total known mass of 602 g, around 525 g is curated at the Natural History Museum, London. A sample analysis plan was devised within a month of the fall to enable scientists in the UK and beyond to quickly access and analyze fresh material. The sample is stored long term in a nitrogen atmosphere glove box. Preliminary macroscopic and electron microscopic examinations show it to be a CM2 chondrite, and despite an early search, no fragile minerals, such as halite, sulfur, etc., were observed.
<p><strong>Main text</strong></p> <p>The UK has a long history of meteorite falls (where the meteorite fireball is witnessed, and the stone recovered, dating back to 1623 (MetBull, 2020). But the last meteorite fall in the UK was nearly 30 years ago when the Glatton stone, an L6 ordinary chondrite was recovered in 1991 (Hutchinson et al., 1991). Meteorite falls are important samples as they are usually recovered within days of the fireball event.&#160; As such, they have not experienced the deleterious effects terrestrial weathering that can change their extraterrestrial mineralogy, chemistry and isotopic composition (Bland et al., 2006). In exceptional circumstances rapidly recovered falls may have avoided rainfall so that soluble extraterrestrial minerals such as salts may be preserved (Chan et al., 2018). Therefore, meteorite falls represent much more pristine extraterrestrial material than their find counterparts within the same group, and consequently, characterisation of their texture and chemical signatures provides a clearer window into solar system processes. However, even falls are limited in their interpretive power as the geological context of the stone (i.e. where in the solar system it originated from) is unknown.</p> <p>To derive this contextual information requires the imaging of the fireball event from multiple geographical positions (Devillepoix et al., 2020). This data provides two vital pieces of information; the initial orbit of the meteoroid can be calculated and the final fall position can be predicted with increased accuracy (Devillepoix et al., 2020). As such, dedicated fireball camera networks (Bowden, 2006) are entering &#8216;a golden age&#8217; with improvements in hardware and software capabilities as well as a reduction in production costs (Spurn&#253; et al., 2014). Continent-scale observatories have been established (Howie et al., 2017) and global networks are under construction (Devillepoix et al., 2020). In addition, these same developments have enabled the amateur astronomy community to construct their own networks either as groups or individuals with functional data pipelines and observations that can rival funded networks. Consequently, the number of recovered meteorite falls with orbits globally has grown rapidly over recent years (Borovi&#269;ka et al., 2015).</p> <p><img src="data:image/png;base64, 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
<p>In the UK there are five meteor camera networks using four different camera and software systems that are aiming to recover meteorites. Utilising all observations of a fireball event from each network is crucial to constrain a precise orbit and fall position. However, the various camera systems generate a diversity of data outputs that are not compatible with each other. As a result, when a potentially meteorite-dropping fireball event occurs it is currently challenging to exchange calibrated observations between networks, which creates obstacles to response time and rapid meteorite recovery.</p> <p>If recorded by at least two observatories, the fireball&#8217;s trajectory, pre-arrival orbit, final mass, and (in combination with a &#8216;dark flight&#8217; model) the final fall position of any surviving meteorite can also be calculated. For this, the minimum useful data set from each camera consists of (a) the location of the observatory, and (b) a set of timed direction vectors representing each point at which the meteor was observed. While the inclusion of additional data are recommended, this is the minimum required dataset for a fireball observation from a single camera, that can be exchanged between cooperating fireball networks to provide for accurate triangulation.</p> <p>Camera systems currently used in the UK or considered as candidates for adoption as a data exchange standard are:</p> <ul> <li><strong>UFOAnalyzer.</strong> Used by UK Meteor Observation Network and the NEMETODE network, UFOAnalyzer&#8217;s &#8220;A.XML&#8221; file contains the essential and recommended data in XML format.&#160; UFOAnalyzer is widely used by amateurs in the UK, Western Europe, and Japan.&#160;&#160;</li> <li><strong>Raspberry Meteor System (RMS, or Global Meteor Network). </strong>Increasingly deployed in the UK. &#160;Observations are recorded in two files, the &#8220;CAL&#8221; file containing all essential metadata, and the &#8220;FTPDetect&#8221; file containing data for all meteors observed in any given night.&#160;</li> <li><strong>Desert Fireball Network (DFN)</strong>, UK Fireball Network, Global Fireball Observatory &#8211; generates a single file with all essential and recommended data, written in Astropy ECSV table format.</li> <li><strong>FRIPON, SCAMP - </strong>produces a file in Pixmet or SExtractor format, but lacking metadata, which needs to be added from a separate list of observatory parameters.</li> <li><strong>Cameras for Allsky Meteor Surveillance (CAMS)</strong> &#8211; similar to RMS. Used in Benelux countries, which have occasional observational overlap with the UK</li> <li><strong>Virtual Meteor Observatory (VMO)<sup>1</sup></strong> &#8211; an XML single-meteor format used by some German and Polish networks and by the European Space Agency (ESA). Not yet used in the UK.</li> </ul> <p>Three existing fireball data formats (UFOAnalyzer, VMO and DFN) are identified and evaluated as candidates for information exchange between networks. Each is adequate, though the UFOAnalyzer A.XML format would need to be generalised to be unambiguous. Each can be read with standard Python library routines.&#160; Currently it would appear that the DFN format is the easiest to write using standard library routines and the easiest to represent internally as a data structure.&#160; We are working towards a recommendation for the standard format for fireball data exchange.</p> <p>Agreeing a common data format enables data sharing but does not require it. Whilst the minimum dataset described above can be utilised effectively, additional information to refine the accuracy of the measurement is also highly desirable and should be included. This recommended data set includes additional information regarding the observing system and uncertainties and additional observations of the event observed at each point in time and will be discussed in detail at the meeting.</p> <p><img src="data:image/png;base64, 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