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Developing Event Reconstruction for CTA. R D Parsons (Univ. of Leeds) J Hinton (Univ. of Leicester). CTA Aims. CTA aims to improve sensitivity by an order of magnitude over HESS Aims to improve angular resolution by a factor of three This can be achieved by: More Telescopes
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Developing Event Reconstruction for CTA R D Parsons (Univ. of Leeds) J Hinton (Univ. of Leicester)
CTA Aims • CTA aims to improve sensitivity by an order of magnitude over HESS • Aims to improve angular resolution by a factor of three • This can be achieved by: • More Telescopes • Larger field of view • Multiple telescope types • Improved Analysis 2
Candidate Array Candidate Array: 4 x Large Telescopes (23m) 23 x Medium Telescopes (12m) 32 x Small Telescopes (6m) Telescopes are single dish reflectors, with a PMT camera
Lookup based reconstruction • Need to reconstruct core and source position (Alt, Az, X and Y) • Standard direction reconstruction uses only the orientation of camera images • More information can be included to improve reconstruction • Extra parameters: • Time Gradient • Image Displacement • Concentration • Energy Consistency
Time Gradient • CTA will be able to record the trigger times on individual pixels • Images move across the camera as the shower develops • Produces a gradient across the integrated image • This gradient is proportional to the distance from the core VERITAS Events
Time Gradient A A Light from B travels further Arrives later Particles travel faster than speed of light in air Light from B arrives earlier B B
χ2 Contributions • Expected values (μ) and errors (σexp) of parameters (for gammas) are found from MC simulations • The measured value (x) can then be compared with that expected at a trial core location • Expected error can then be compared with that measured • A χ2 contribution can then be made for each parameter • χ2 = (x – μ) / σexp Expected Direction Measured Direction
Lookup tables • Lookup tables are filled with expected values • Lookups are based on dependent measurables • Tables are smoothed and extended
Finding the Minimum • A summed chi-squared value can be found for a trial X ,Y, Alt and Az • This defines a 4D Chi-squared space • Best fit shower axis lies at the minimum of this surface • Use ‘Rolling function’ to find the minimum point
Events (Ground Plane) Standard Reconstruction True Position LU based Reconstruction
Performance (Preliminary) Standard Reconstruction Lookup Based Reconstruction 15-20% improvement
Performance (Preliminary) 5 σ Detection 50h Observation Min 10 Events 1% Background Systematics Standard Reconstruction Lookup Based Reconstruction 20% Sensitivity Gain
Performance (Preliminary) 5 σ Detection 50h Observation Min 10 Events 1% Background Systematics Goal Sensitivity Lookup Based Reconstruction 20% Sensitivity Gain
Maximum Likelihood • For most parameters the errors are non-gaussian • Hence the chi-squared value is not valid • Will cause problems in estimation of error on the shower axis • Instead the maximum likelihood estimator will be used • Requires an extra dimension in lookups
Summary • CTA will provide large improvements in both sensitivity and angular resolution • The current reconstruction method is not optimised for a large array • 15-20 % improvements in sensitivity have been gained from improved reconstruction • Even larger gains may be achievable • Further refinements to reconstruction • Switch to maximum likelihood estimator • Introduce weighting of contributions • Combine with multi-variate analysis