Deep-sea Deployment of the KM3NeT Neutrino Telescope Detection Units by Self-Unrolling
Journal of Instrumentation(2020)SCI 4区
Ist Nazl Fis Nucl | IPHC | Univ Valencia | Aix Marseille Univ | N&K Univ Athens | NCSR Demokritos | Univ Granada | Univ Politecn Valencia | Univ Paris | NIOZ Royal Netherlands Inst Sea Res | Complesso Univ Monte S Angelo | Nikhef | Univ Mohammed V Rabat | KVI CART Univ Groningen | North West Univ | Univ Mohammed 1 | Univ Salerno | ISS | TNO | Cadi Ayyad Univ | Univ Witwatersrand | Univ Wurzburg | Western Sydney Univ | Lab Univers & Particules Montpellier | Univ Munster | Univ Strasbourg | Curtin Univ | Natl Ctr Nucl Res | Tbilisi State Univ | Univ Amsterdam | Univ Johannesburg | Univ Bologna | Eberhard Karls Univ Tubingen | Univ Pisa | Friedrich Alexander Univ Erlangenen Nurnberg
Abstract
KM3NeT is a research infrastructure being installed in the deep Mediterranean Sea. It will house a neutrino telescope comprising hundreds of networked moorings - detection units or strings equipped with optical instrumentation to detect the Cherenkov radiation generated by charged particles from neutrino-induced collisions in its vicinity. In comparison to moorings typically used for oceanography, several key features of the KM3NeT string are different: the instrumentation is contained in transparent and thus unprotected glass spheres; two thin Dyneema ropes are used as strength members; and a thin delicate backbone tube with fibre-optics and copper wires for data and power transmission, respectively, runs along the full length of the mooring. Also, compared to other neutrino telescopes such as ANTARES in the Mediterranean Sea and GVD in Lake Baikal, the KM3NeT strings are more slender to minimise the amount of material used for support of the optical sensors. Moreover, the rate of deploying a large number of strings in a period of a few years is unprecedented. For all these reasons, for the installation of the KM3NeT strings, a custom-made, fast deployment method was designed. Despite the length of several hundreds of metres, the slim design of the string allows it to be compacted into a small, re-usable spherical launching vehicle instead of deploying the mooring weight down from a surface vessel. After being lowered to the seafloor, the string unfurls to its full length with the buoyant launching vehicle rolling along the two ropes.The design of the vehicle, the loading with a string, and its underwater self-unrolling are detailed in this paper.
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Key words
Cherenkov detectors,Manufacturing,Overall mechanics design (support structures and materials, vibration analysis etc),Special cables
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