We propose a scalable distributed data structure (SDDS) called SD-Rtree. We intend our structure for point, window and
kNN queries over large spatial datasets distributed on clusters of interconnected servers. The structure balances the storage
and processing load over the available resources, and aims at minimizing the size of the cluster. SD-Rtree generalizes the
well-known Rtree structure. It uses a distributed balanced binary tree that scales with insertions to potentially any number
of storage servers through splits of the overloaded ones. A user/application manipulates the structure from a client node.
The client addresses the tree through its image that can be possibly outdated due to later split. This may generate addressing
errors, solved by the forwarding among the servers. Specific messages towards the clients incrementally correct the outdated
images. We present the building of an SD-Rtree through insertions, focusing on the split and rotation algorithms. We follow
with the query algorithms. We describe then a flexible allocation protocol which allows to cope with a temporary shortage
of storage resources through data storage balancing. Experiments show additional aspects of SD-Rtree and compare its behavior
with a distributed quadtree. The results justify our various design choices and the overall utility of the structure.
Keywords Spatial indexing - Distributed structure